Category: Transportation

  • Magellan Debuts SmartGPS Apps for Apple and Android Mobile Devices

    Magellan SmartGPS App_iPhone
    screenshot: Magellan SmartGPS App

    Magellan has announced Magellan SmartGPS Apps for iOS and Android mobile devices.

    Following the recent announcement of Magellan’s SmartGPS device, the free Magellan SmartGPS Apps for iOS and Android devices are the next key elements in Magellan’s Smart Ecosystem, a cloud platform that integrates social media and navigation content directly onto a navigation map, the company said. The SmartGPS Apps automatically deliver continually updating reviews and tips for local businesses from social media including Yelp, Foursquare, and other partners to create current, local and personalized driving and pedestrian experiences.

    The Magellan SmartGPS mobile apps display location-relevant information “squares” that graphically flip to show reviews, tips and offers from Yelp and Foursquare for nearby restaurants, stores and services. Users can then navigate to those locations directly from the SmartGPS App without needing to open an additional application or device. The cloud architecture enables new monetization of end users’ mobile search and navigation, and additional social media and content partners.

    “We architected the Smart Ecosystem to integrate with automotive infotainment and mobile network service platforms so users can enjoy a truly mobile, connected car experience now,” said Peggy Fong, president of MiTAC Digital Corporation. “SmartGPS mobile apps connect to the vehicle dash, allowing users to easily search social media and points-of-interest for destinations, and send the locations via Bluetooth or Wi-Fi to SmartGPS-enabled vehicle navigation systems.”

    Magellan’s free iOS and Android SmartGPS apps create a total-solution SmartGPS experience that is truly mobile. Magellan connects the smartphone to the vehicle dashboard, enabling location sync and sharing, hands-free operation and data connectivity. Users can pair their Magellan SmartGPS app with SmartGPS-enabled navigation systems. Using their SmartGPS App, SmartGPS enabled navigation system, or PC, users can search for a location, save the location in Magellan’s Smart Ecosystem cloud, and sync and share the location to any SmartGPS enabled device via Wi-Fi or Bluetooth.

    The free Magellan SmartGPS Apps will be available in North America this Spring, and in Europe this Summer, from iTunes and Google Play. Premium versions of both apps featuring spoken turn-by-turn navigation will also be available.

  • Danaher Acquires Fleet Tracking Company Navman Wireless

    Navman Wireless, a provider of fleet and asset management technology, announced its acquisition by Danaher Corporation, a Fortune 250 science and technology company. Navman Wireless’ technology currently monitors more than 175,000 vehicles and assets owned by over 14,000 organizations worldwide.

    The OnlineAVL2 system, delivered under the Software-as-a-Service (SaaS) model, enables fleet and asset managers to track all vehicle and asset locations in real time as well as control fuel, labor and vehicle/asset operating costs.

    Navman Wireless reports it has had five successive years of revenue and installed base growth during which the company entered new vertical sectors including local services, transportation, construction, cold chain, mining, and oil and gas, and opened new geographic markets including Mexico, Italy, China and Taiwan.

    “Danaher has the resources, global footprint and commitment to support the continued growth of the Navman Wireless platform and business, along with a strong track record of building brands within its highly diversified portfolio,” said TJ Chung of Navman Wireless. “All of these factors will help us continue to enhance our technology platform, expand into new vertical and geographic markets, and bring the benefits of fleet and asset management to vehicles and assets around the world that are not yet taking advantage of the technology.”

    Navman Wireless is Danaher’s first acquisition in the fleet/asset management space, joining Danaher’s portfolio spanning test and measurement, life sciences and diagnostics, dental, environmental and industrial technologies. Financial details of the transaction were not disclosed.

  • Broadcom Launches GNSS Chip with Geofence Capabilities

    Broadcom Corporation has introduced the BCM47521, a GNSS chip with architecture that enables geofence capabilities while preserving battery life. According to Broadcom, the new chip opens the door to always-on location-aware applications such as social networking, place-based mobile commerce and local merchant advertising.

    Broadcom will showcase its GNSS innovations at the upcoming Mobile World Congress show in Barcelona, February 25-28.

    A geographical region of interest (“geofence”) is being used by many new and innovative location-aware applications. The geofence feature enables the application to receive a notification when a user enters or exits a virtual perimeter. However, the implementation of this feature in traditional architectures is not viable, as the applications processor needs to run constantly, causing rapid drain to the device’s battery. Broadcom’s new BCM47521 overcomes this issue, making it possible to continuously monitor geofence areas while consuming 60x less battery power.

    “The astounding growth of mobile devices is driving new opportunities for inventive applications that deliver valuable location-aware information,” said Scott Pomerantz, Broadcom vice president and general manager, GPS. “With the BCM47521’s low-power geofence mode, Broadcom is driving the next wave of system power consumption innovation that will allow OEMs to incorporate features that differentiate their mobile offerings and make location-aware, always-on applications a reality.”

    The BCM47521 chip also provides multi-constellation support by simultaneously collecting data from GPS, GLONASS, QZSS and SBAS, and using the best received signals, resulting in faster searches and more accurate real-time navigation, Broadcom said. Broadcom’s multi-constellation technology, coupled with advanced signal processing, provides faster positioning performance for improved user experience, especially in challenging urban environments where buildings and obstructions can dramatically impact accuracy and time-to-first-fix.

    A key feature is the 60x better system power efficiency versus a host-based architecture. An advanced host-offload mode monitors geofences in the background and only activates the applications processor when there is a trigger event, and smart algorithms adapt in real-time as the user gets closer to a geofence boundary.

  • Urban GPS Navigation Improved 50-90 Percent, Researchers Say

    A new system developed by Universidad Carlos III de Madrid (UC3M) researchers uses sensors to improve the ability of GPS to determine a vehicle’s position compared to use of conventional GPS devices by up to 90 percent.

    The prototype can guarantee the position of the vehicle to within 1 or 2 meters in urban settings, the researchers said.

    The system can be installed in any vehicle for little cost and may eventually work on smartphones, the researchers said. Their findings are described in the report, “Context-Aided Sensor Fusion for Enhanced Urban Navigation.”

    Sensor Fusion. The prototype system incorporates a conventional GPS signal with those of other sensors (accelerometers and gyroscopes) to reduce the margin of error in establishing a location. “We have managed to improve the determination of a vehicle’s position in critical cases by between 50 and 90 percent, depending on the degree of the signals’ degradation and the time that is affecting the degradation on the GPS receiver,” said David Martín, a researcher at the Systems Intelligence Laboratory (LSI – Laboratorio de Sistemas Inteligentes) at UC3M. The system was jointly designed and developed by LSI and the Applied Artificial Intelligence Group (GIAA – Grupo de Inteligencia Aplicada Artificial).

    The margin of error of a commercial GPS, such as those that are used in cars, is about 15 meters in an open field, where the receiver has wide visibility from the satellites. However, in an urban setting, the determination of a vehicle’s position can be off by more than 50 meters, due to the signals bouncing off of obstacles like buildings, trees, or narrow streets. In certain cases, such as in tunnels, communication is lost, hindering the GPS applications reaching Intelligent Transport Systems, which require a high level of security.

    “Future applications that will benefit from the technology that we are currently working on will include cooperative driving, automatic maneuvers for the safety of pedestrians, autonomous vehicles or cooperative collision warning systems,” the scientists comment.

    Integration of GNSS antenna of rover receiver and IMU in a platform over the roof of the vehicle.
    Integration of GNSS antenna of rover receiver and IMU in a platform over the roof of the vehicle.

    The greatest problem presented by a commercial GPS in an urban setting is the loss of all satellite signals. “This occurs continually, but commercial receivers partially solve the problem by making use of the urban maps that attempt to position the vehicle in an approximate point,” Martín said. “These devices can indicate to the driver approximately where he is, but they cannot be used as a source of information in an Intelligent Transport System like those we have cited.”

    The basic elements that make up this system are a GPS and a low-cost inertial measurement unit (IMU). The latter device integrates three accelerometers and three gyroscopes to measure changes in velocity and maneuvers performed by the vehicle. Then, everything is connected to a computer that has an application that merges the data and corrects the errors in the geographic coordinates. Enrique Martí of UC3M’s GIAA explains, “This software is based on an architecture that uses context information and a powerful algorithm (an unscented Kalman filter) that eliminates the instantaneous deviations caused by the degradation of the signals received by the GPS receiver or the total or partial loss of the satellites.”

    The current prototype can be installed in any type of vehicle. It is already working on board the IVVI (Intelligent Vehicle based on Visual Information, pictured above), a car that has become a platform for research and experimentation for professors and students at the university.

    The LSI and UC3M researchers working on this “intelligent car” can capture and interpret all of the information available on the road, and that drivers use. To do this, the team is using optical cameras, infrareds and lasers to detect whether drivers are crossing the lines on the road, or whether there are pedestrians in the vehicle’s path, as well as to adapt the speed to the traffic signals and analyze the driver’s level of sleepiness in real time.

    Next Steps. The researchers will analyze the possibility of developing a system that makes use of the sensors that are built into smartphones, because intelligent telephones are equipped with more than ten sensors, such as an accelerometer, a gyroscope, a magnetometer, GPS and cameras, in addition to Wi-Fi, Bluetooth or GSM communications.

    “We are now starting to work on the integration of this data fusion system into a mobile telephone,” said Enrique Martí, “so that it can integrate all of the measurements that come from its sensors in order to obtain the same result that we have now, but at an even much lower cost, since it is something that almost everyone can carry around in his pocket.”

  • Telematics Detroit 2013

    Telematics Detroit — scheduled for June 5-6, in Novi, Michigan — is a conference and exhibition focused on the entire telematics ecosystem. In 2012, 1800+ executives attended along with 100+ industry speakers.

    Key topics this year include:

    • The Ultimate End-to-End Telematics Platform: Dispel the “killer app” myth to adopt an approach to connectivity that eschews the next big thing in favor of a holistic suite of connected services that encompasses CRM, HMI and content.
    • Turn the Car into a Money-Making Machine: Subscription-only models have failed to ignite mass adoption of connected vehicle services. Discover how to create a flexible micro-transactional platform that aligns with the service and payment demands of consumers.
    • Make Big Data Useful Data: Tackle the proliferation of vehicle generated information to debate the granularity of data collection required to provide OEMs with data sets relevant to optimizing the driving and vehicle ownership experience.
    • The Telematics Trojan Horse: Debate whether strategic partnerships with the titans of CE, including Apple, Google and Microsoft, will result in diminished OEM influence or translate into the ability to attract tech. loyal consumers and close the automotive innovation gap.
    • The Infotainment Ecosystem Reinvented: BMW, Ford and GM announce their connected car visions to gain cross-industry buy-in. Analyze whether opening up APIs and SDKs will attract third party developers by creating higher volumes to support a truly auto-centric business case.

    Visit the website for more information.

  • NovAtel Announces MEMS IMU for Pairing with OEM6 Receivers

    NovAtel Announces MEMS IMU for Pairing with OEM6 Receivers

    NovAtel Inc., supplier of OEM GNSS components and subsystems, has announced the addition of a new commercially exportable MEMS IMU to its line of SPAN GNSS/INS products. Available for immediate shipping, this custom Analogue Devices MEMS inertial sensor is exclusive to NovAtel, and can be paired with an OEM6 receiver card to provide continuously available position, velocity and attitude (roll, pitch, yaw) in a small, single-unit form factor.

    SPAN tightly couples NovAtel’s precise GNSS technology with highly accurate inertial measurement technology to provide a robust, stable and continuous 3D navigation. The new OEM-ADIS-16488 sensor is designed to be coupled with NovAtel’s OEM6 receivers via the MEMS Interface Card (MIC), providing integrators with a  compact, powerful GNSS/INS engine, NovAtel said.

    The OEM-ADIS-16488 features low noise gyros and accelerometers in a small, lightweight form factor.  This IMU enables precision measurements for applications that require low cost, high performance and rugged durability.  Tight-coupling of the two technologies enables continuous robust positioning in difficult environments where satellite signals are unreliable or unavailable for short periods of time.

    The OEM-ADIS-16488 is now available for order and immediate shipment.

  • Network RTK for Intelligent Vehicles

    opener

    Accurate, Reliable, Available, Continuous Positioning for Cooperative Driving

    By Scott Stephenson, Xiaolin Meng, Terry Moore, Anthony Baxendale, and Tim Edwards

    Adoption of network real-time kinematic GNSS positioning can lead to major improvements in vehicle localization, although implementation must overcome some real-world challenges. This article assesses the extent of GNSS signal outage in a motorway environment. The average total GNSS outage period and the average time to resolve ambiguity for the network RTK solution can help assess complimentary sensors for a ubiquitous positioning system.

    Real-time vehicle localization is one of three key enabling technologies for the concepts of vehicle-to-vehicle and vehicle-to-infrastructure (V2V and V2I, collectively termed V2X, see opening graphic), a classification of intelligent transport systems (ITS). The further enabling technologies are ad-hoc dynamic networking of agents, and accurate dynamic local traffic maps. Jointly, these require that positioning be accurate, reliable, available, and continuous.

    A natural evolution in road transport, V2X promises to deliver the next major safety breakthrough. The concept moves away from vehicles making individual decisions about road safety, as in advanced driver assistance systems, and towards a cooperative driving approach that shifts the emphasis from collision protection to collision prevention. The U.S. National Highway Traffic Safety Administration  estimates that V2X technology can avoid or minimize up to 80 percent of collisions of unimpaired drivers, and that even a small number of deployed vehicles will provide tangible safety benefits.

    Network RTK GNSS positioning, like V2X applications, requires a communication system; and by its nature V2X has a positioning solution requirement. Thus it is envisioned that network RTK will play an essential role in the implementation of V2X systems. The consensus between car manufacturers and research organizations is that the future of V2X communication lies with Dedicated Short Range Communication (DSRC) devices, and a large pilot study is currently under way. However, in the short term many V2X applications could be achieved using existing technology, such as cellular communication, offering a legacy solution, and initiating early uptake of V2X applications.

    Previous research by the Nottingham Geospatial Institute (NGI) at the University of Nottingham showed that network RTK positioning can provide a high-accuracy positioning solution during real-world trials, but also revealed two areas of concern: the loss of the fixed-integer ambiguity during satellite line-of-sight outages; and the fragility of the data communications service that delivers the real-time correction information. During road tests, a fixed-ambiguity network RTK solution was available for less than 50 percent of the time on United Kingdom (UK) roads.

    Network RTK Vehicle Positioning
    Figure 1  OS Net reference station network in Britain, owned by Ordnance Survey.
    Figure 1. OS Net reference station network in Britain, owned by Ordnance Survey.

    Networks of continuously operating reference stations (CORS) extend across Europe, North America, Australia, and East Asia. Networks vary in size from five or six reference stations for agriculture to systems of hundreds of CORSs providing national or regional service. Figure 1 shows the location of the OS Net CORS run by Ordnance Survey in Great Britain.

    Figure 2 shows the main advantage of network RTK as compared to traditional RTK. The individual reference stations on the left suffer from the spatial decorrelation of errors as distance between reference and rover receivers increases. Adequate vehicle positioning would require individually operating reference stations to be placed approximately 20–30 kilometers apart. However, a CORS network can be used to develop a model of differential corrections, as shown at right, from which a rover receiver can interpret RTK correction information and use this during the computation of its position. The geometry of a CORS network allows two adjacent reference stations to be located up to 80–100 kilometers apart without degrading the accuracy, although in practice most systems tend to locate them closer together than this. This is essentially a reduction from 30 reference stations per 10,000km² for conventional RTK, to 5–10 reference stations for network RTK, delivering high-precision services to virtually unlimited users.

    Figure 2  The improved navigation performance from RTK (left) to network RTK (right).
    Figure 2. The improved navigation performance from RTK (left) to network RTK (right).

    It is expected that the CORS networks will become a critical part of a country’s spatial infrastructure, and countries like the UK are leading the way. This makes network RTK one of the most promising positioning technologies for road vehicles and ITS applications.

    As shown in previous research, network RTK can deliver a vehicle positioning accuracy of better than 5 centimeters, and in real-world tests this level of accuracy had an availability of 41–45 percent, depending on the environment. It was also found that the correction information was available via the GSM network for more than 80 percent of the time. In these same tests, the total time without any GNSS position solution (network RTK, DGNSS, or stand-alone) was up to 16 percent in a motorway environment. Network RTK was able to provide lane-level positioning accuracy, but the sensitivity of the technique to GNSS signal loss and coverage of the communication network had a significant effect on availability. GNSS outages could be caused simply by passing under a road bridge, and the network RTK solution would be lost, although there would continue to be a DGNSS solution for a short period. Finding effective solutions to these current barriers, which prevent wide adoption of network RTK, is a key enabling step for ITS.

    Accuracy Assessment

    In much more controlled tests to assess the accuracy of network RTK on a dynamic vehicle, the network RTK GNSS receiver was compared to an inertial navigation system (INS). This test was carried out using the NGI roof laboratory, which houses a 120-meter rail track running an electric locomotive.

    Both the network RTK receiver and the INS used the same antenna, fed separately through a signal splitter. The network RTK solution was recorded in real time onto an SD card in NMEA GGA format. The INS data was recorded and post-processed in a tightly coupled solution using a continuously operating dual-frequency GNSS receiver base station located inside the rail track circuit. There were no recorded GNSS outages as there is a clear-sky view from the roof laboratory.

    The antenna point was also tracked using a total station, recording observations at 10 Hz stamped with GPS time. Although the accuracy of the tracking mode of the total station is not high enough to assess the accuracy of the network RTK solution (because of time synchronization issues), it ensures that any gross errors in GNSS observations that could affect both the network RTK and INS solutions did not occur.

    The results in Table 1 show that the network RTK solution consistently performs to a high accuracy, giving a low standard deviation from the mean in all directions. Listed are three laps of the rail circuit recorded at different times. There are a small number of epochs that encounter large differences of more than 200 millimeters, such as during laps 2 and 3, although these appear to be very short-term anomalies, possibly caused by dynamic GNSS signal multipath or delays and message loss in the communication system.

    TABLE 1.  Comparison of the tightly coupled (GPS+IMU) solution with the N-RTK solution.
    Table 1. Comparison of the tightly coupled (GPS+IMU) solution with the N-RTK solution.

    The worst absolute accuracy is shown during lap 3, although even in this case, with a mean of 21 millimeters and 99 percent of the observations lying within 15 millimeters, this solution still delivers a solution within 36 millimeters of the ground truth. 50 percent of the network RTK observations are within 1 millimeter of the mean difference between the two solutions, showing remarkable consistency and precision.

    Challenge: Comm Signal Strength

    A fundamental aspect of network RTK is the delivery of reference station data used in the processing of the receiver’s position. Although there are various methods used to deliver this data, the most secure and reliable method involves transmitting raw reference station observations, so that the receiver may perform the calculation of the position with all possible data. This provides the highest integrity. The vulnerability here is not the algorithmic method used to transmit the data, but the communication system, in three ways:

    • There is no connection between reference and rover receivers.
    • There is data loss from the connection.
    • There is an unacceptable delay in the transmission of the data.

    Lack of Coverage. The preferable communication system is to use mobile Internet over the GSM/GPRS cell network, which is already well established. The major network operators claim over 99 percent coverage of the population in the UK, but this does not take into account physical and local conditions such as land and building obstructions, atmospheric conditions, and inter-ference from vegetation and other
    radio signals.

    A 2011 BBC survey in the UK found that when users had a cell-phone data connection it was 3G for 75 percent of the time (2G otherwise), but significant “notspots” include major rail and road networks. An ongoing study by OpenSignalMaps has found that a 3G service is only available 58 percent of the time. A 2011 government report detailed the extent of 2G and 3G services, shown in Figure 3. Areas with poor data communication coverage (below 50 percent) pose a significant problem for network RTK in vehicles.

    Figure 3 2G (left) and 3G (right) coverage by geographic area in the UK: green, >90 percent; yellow, 70–90 percent; blue, 50–70 percent; purple, 25–50 percent; red, <25 percent.
    Figure 3. 2G (left) and 3G (right) coverage by geographic area in the UK: green, >90 percent; yellow, 70–90 percent; blue, 50–70 percent; purple, 25–50 percent; red,

    Data Loss. Continuity tests show that when using GSM/GPRS mobile communications to transfer the network  RTK corrections, the availability was approximately 88 percent, and the connection could be lost after a few hours of continuous use. This can be caused either by SIM cards that use dynamic IP addresses, creating interruptions when renewing the addresses, or where voice data was prioritized on the network. Other research has shown that a typical mobile Internet connection (a combination of wired public Internet and GPRS) suffers from approximately 20 percent data loss.

    Message Delay. A network RTK receiver  imposes a transmission time limit on the correction messages that are used to fix the common integer ambiguity (in this case, the Leica GS10 limit is 10 seconds), although messages younger than 60 seconds can be used to give an accurate DGNSS solution. Messages older than 60 seconds result in the receiver only being able to output a standalone position, by which time the accuracy will decay beyond vehicle positioning requirements. Earlier research found the typical mobile Internet connection suffers from an average delay of 0.85 seconds.

    Challenge: GNSS Outages

    The majority of the transport infrastructure is outside and has a clear view of the sky, particularly away from heavily urbanised areas. However, the receiver gets no warning of impending signal obstruction, so that even momentary obstructions such as an overhead gantry on the motorway can cause significant loss of positioning accuracy, and often causes a receiver to output no solution at all, as shown in Figure 4. Here the vehicle is traveling in a northern direction in lane 1 of the left-hand carriageway and passes underneath a series of bridges at a motorway junction. This causes both GNSS outages and deteriorated positional accuracy, so much so that the vehicle is positioned in the southern carriageway (note that the underlying map image is of unknown accuracy).

    Figure 4  The typical effect of overhead obstructions on vehicle GNSS positioning.
    Figure 4. The typical effect of overhead obstructions on vehicle GNSS positioning.

    GNSS outages can occur in several ways: the obstruction of the GNSS signals can lead to a loss of signal lock; a momentary obstruction or partial obstruction can cause cycle slips to occur (during carrier-phase positioning); if the visible satellites at the rover receiver are not the same as at the reference receiver, then the ambiguity cannot be resolved; there may be intentional or unintentional signal jamming or interference; and if the receiver assessed the integrity or accuracy to be poor then it may not provide a solution.

    NGI test vehicle.
    NGI test vehicle.
    Experiment Set-Up

    The test vehicle was equipped with a GNSS receiver and antenna, receiving real-time corrections using a GSM/GPRS connection. The signal strength was measured simultaneously using the Android application RF Signal Tracker on an Android-based mobile phone.

    The data recorded includes: GNSS raw data, RINEX format; network RTK real time output, NMEA format; GSM signal strength, CSV format. As the experiments were not intended for the analysis of the accuracy of the GNSS receiver, there was no need to utilize the ground truth system onboard the NGI test vehicle.

    RF SIGNAL TRACKER Android application and mobile phone used to record the GSM signal strength (left), and GNSS receiver (right).
    RF SIGNAL TRACKER. Android application and mobile phone used to record the GSM signal strength (left), and GNSS receiver (right).

    Test Environment. Two test scenarios were chosen for the experiments. To assess the GNSS signal outages, the test vehicle was driven along the M1 motorway, a length of approximately 100 kilometers. The M1 is a major road transport artery linking London in the South to Leeds in the North of England, typically with three or four lanes in each direction. This route passes under 214 overhead obstructions (northbound and southbound directions), of known classification (gantry, footbridge, road bridge). This scenario was chosen as the environment is quite rigid, allowing repeatable tests, and it is the area in which future ITS technology is most likely to be adopted first.

    To test the variation of GSM signal strength in real-world conditions, a small circuit was chosen close to the Nottingham Geospatial Institute (shown in Figure 5), which incorporates a variety of environments from open sky to bridge underpasses, and dense tree coverage. Using a repeatable path allows the identification of issues that are attributable to problems with the communications link as opposed to other issues (such as hardware problems and GNSS signal outages), and despite the short distance, the loop also provides a wide range of GSM signal strengths. During the experiments to follow, the data was measured during three consecutive laps of the circuit.

    Experiment Results

    GSM Signal Strength. The variation in color along the NGI test route is an indication of the RSSI (Received Signal Strength Indicator). In this area, the RSSI varies between –50 dBm and –105 dBm, which are the typical maximum and minimum strengths of a cellular network. This is despite the assessment from the network provider that this entire area delivers high-speed Internet and email. Figure 5 also shows the subjective rating and expected performance of the RSSI.

    Figure 5  The GSM signal strength around the NGI circuit in Nottingham, with the subjective RSSI ratings.
    Figure 5. The GSM signal strength around the NGI circuit in Nottingham, with the subjective RSSI ratings.
    Table2
    Table 2. The spread of RSSI observations recorded during the trials around the NGI circuit.

    Table 2 details the RSSI observations measured during the signal strength trials around the NGI circuit. The range of values shows the typical maximum and minimum RSSI values experienced by a cell-phone user (other than no signal being received). The signal strength is recorded every 5 meters, in order to achieve a good geographic spread across the area (as opposed to biasing the results with observations recorded whilst the vehicle is stationary). The RSSI observations do not correspond to a typical Gaussian distribution, suggesting that there are external influences on the strength of the signal and the handover between one cell tower and the next.

    Figure 6 shows an increase in the age of correction (AoC) of the messages following a drop in signal strength (RSSI) to approximately –100 dBm. This is visible from the peaks in the age of correction message to over 8 seconds. The graph shows three laps of the NGI circuit, noticeable by the repeated pattern of signal strength. The increase in the AoC occurs at approximately the same geographic location on each lap ­— an area in the northwest of the circuit that suffers from weak signal strength, as seen in Figure 5. The received signal strength is the sum of the direct and indirect (or reflected) waves, varying with distance between a series of maximum and minimum values. On a moving vehicle, the RSSI will vary with time as it moves between these maximum and minimum values, and is especially complicated in urban areas where there may be no direct waves at all, and waves are propagated by a series of reflections. A moving receiver also suffers from a Doppler shift in the received signal’s frequency.

    figure 6  The effect of GSM RSSI on the age of correction messages.
    Figure 6. The effect of GSM RSSI on the age of correction messages.

    During network RTK positioning, the receiver considers messages older than 10 seconds unusable for a fixed network  RTK solution, although messages younger than 60 seconds can be used to give an accurate DGNSS solution. This scenario has a brief occasion during the loop in which loss of the network RTK solution is attributable to weak GSM signal strength.

    A close inspection of Figure 6 highlights a slight delay between the drop in RSSI to –100 dBm and the increase in the AoC. This delay needs further analysis, but is assumed to relate to the slower update rate of the ionospheric and tropospheric corrections (10 seconds and 60 seconds respectively). There are also periods of increased AoC that are uncorrelated with a drop in RSSI, for which there is no clear explanation, although none of these occasions results in a loss of the fixed ambiguity network RTK solution.

    Eighty cell handovers were recorded during the trials, which is higher than average as this area is liable to carry a large volume of cellular traffic (there is a university, a large hospital, and major roads, as well as general housing and business properties). The cell handovers showed an average improvement of +1.2 dBm from just before the handover until just after. The maximum improvement is +22 dBM, although there are occasions when the RSSI gets worse, the biggest fall in received signal strength being –12 dBM. Figure 7 displays the frequency distribution of the change in RSSI during a cell handover. The resolution of the RSSI measurements is 2 dBm.

    figure 7  Frequency histogram of the RSSI change during a cell handover (2 dBm bins).
    Figure 7. Frequency histogram of the RSSI change during a cell handover (2 dBm bins).

    Cell handovers occur at a range of RSSI, not just low signal strength. This suggests that cell handovers are managed by the network operator in a way that does not disrupt the data connection. There appears to be no correlation between a cell handover and a problem with the correction message delivery.
    Although this part of the experiment was not a test of receiver performance, during the NGI circuit trial 63.1 percent of the receiver observations were network RTK fixed, and 33.0 percent of the observations were DGNSS observations. Therefore, 3.9 percent of the possible epochs had no observations, partly due to passing under bridges. The largest GNSS outage during circuit trials was 4.85 seconds. These values show an improvement over previous research, particularly as this is considered a difficult GNSS positioning environment.

    GNSS Outages. During the GNSS outages tests, the vehicle traveled at a constant speed of 60 mph, mostly in lane 1 of the motorway. Table 3 shows statistical breakdown of the GNSS outages and the resulting reacquisition of the fixed ambiguity in network RTK positioning.

    Table3
    Table 3. Statistical breakdown of GNSS outages caused by overhead objects.

    The longest total GNSS outage caused by an overhead obstruction was 4.65 seconds, when passing under a road bridge. At 60 mph this translates into a distance of almost 130 meters without any GNSS solution, which is much further than the width of the overhead object. Once the GNSS signal is reacquired, there is a short period during which the fixed integer ambiguity is resolved, in order to achieve the centimeter-level accuracy. The longest duration between start of a GNSS outage and reacquisition of the fixed ambiguity for the network  RTK solution is 52.10 seconds, or 1,450 meters. Although during this period, a DGNSS solution is available as soon as the satellites are reacquired.

    Discussion

    Nationwide adoption of cellular Internet services by cell phone users has provided a useful communication system for positioning systems. But network providers do not guarantee the type of communication service demanded by advanced ITS and V2X applications. The quality of service is too easily disrupted by passing into an area with weak signal strength, or when many users congest the bandwidth.

    Future generations of cell networks, such as 4G, will significantly increase the available bandwidth and increase download speeds, but there is an unknown increase in the demand on the system from non-critical cell-phone users. The issues in the existing system can be minimized slightly through improvements at the user end, such as using stronger gain antennae or accessing multiple networks with different SIM registrations. The nature of cell networks also leads to a decrease in signal strength occurring prior to the cell handover, which can cause delays in the message delivery, so the management of this process could be improved. Future testing of the GSM network can be carried out at the new innovITS ADVANCE test facility at MIRA in the UK, where the private network can be controlled and manipulated as desired.

    An alternative communication method, that has the same wide area coverage of a cell network, is satellite communication. In tests, observation of static positions showed 98 percent of messages were received correctly at a latency of less than 10s. This compares with the High-Speed Download Packet Access (HSDPA) cell network figures of 99.8 percent and 1.2s. When in a kinematic mode, the satellite communications fared less well. Testing three separate satellite communication systems, problems were encountered with reacquisition, long latency, and static initialization. At best, 70 percent of correct messages were received, with a latency of 4.2s, although often over 20s.

    Digital Audio Broadcasting (DAB) is capable of being used as a future communication method for network  RTK positioning. Compared to traditional VHF and UHF radio communication, it uses the frequency more efficiently and is more robust to degradation.

    The design of the GNSS receiver used in testing is aimed at delivering a very reliable and highly accurate solution. It was not intended for use on vehicles and in dynamic environments. The receiver deals well with multipath, rejecting low-strength GNSS signals, allowing the resolution of the integer ambiguity. However, this means that in city environments it may provide fewer solutions than a modern smartphone, albeit with a much higher accuracy when it does. Recent research shows it is possible to increase the speed of ambiguity resolution, and customize integrity controls, making the resolution process close to instantaneous in certain circumstances.

    Conclusions

    As cellular communications networks evolve in the UK and other countries, the performance of the network  RTK receiver also improves. We found that once the RSSI drops to approximately –100dBm, the correction messages suffer from either message loss or message delay that causes the receiver to underperform. The performance of the communication link during a cell tower handover has shown that there is no deterioration in the performance linked to the handover, although cell tower handovers generally occur at the limits of a cell tower’s coverage, and hence at low signal strengths.

    The resolution of the fixed integer ambiguity is crucial for the high-accuracy solution available with a network RTK receiver. The resolution is relatively fast, typically within two minutes from a cold start, or fewer than 20 seconds from a hot start. During tests on the M1 motorway, passing under an overhead obstruction caused a maximum total GNSS outage of 4.65 seconds, and a maximum time until the ambiguity was resolved of 52.10 seconds. On average, the GNSS outage was 1.14 seconds with an average re-fix time of 13.13 seconds. Until the ambiguity is resolved, the receiver can continue with a DGNSS solution delivering lane-level accuracy.

    Manufacturers

    NGI’s inertial nav system is an Applanix POS/RS, which consists of a NovAtel OEM4 dual-frequency GPS receiver combined with a navigation-grade Honeywell consumer IMU. The network RTK position was provided by a Leica GS10 receiver and Leica SmartNet correction service over the Vodafone network. Both receivers used a Leica AS10 antenna.


    Scott Stephenson is a Ph.D. student at the Nottingham Geospatial Institute within the University of Nottingham.

    Xiaolin Meng is associate professor, theme leader for positioning and navigation technologies, and MSc course director for GNSST and PNT at the Nottingham Geospatial Institute of the University of Nottingham. 

    Terry Moore is director of the Nottingham Geospatial Institute (NGI) at the University of Nottingham, where he is the professor of satellite navigation and also an associate dean within the Faculty of Engineering.

    Anthony Baxendale is head of Advanced Technologies & Research at MIRA Ltd.

    Tim Edwards is the lead engineer of the Intelligent Transportation Systems (ITS) research group at MIRA Ltd

  • Call for Participation: Round 2 of NGS Kinematic GPS Challenge

    NOAA’s National Geodetic Survey (NGS) is conducting a 12-year project, called Gravity for the Redefinition of the American Vertical Datum (GRAV-D), to redefine the vertical datum of the United States by flying airborne gravity missions. The accuracy of the resulting vertical datum depends directly on the quality of the aircraft’s GNSS position solutions.

    In August 2010, NGS issued a Kinematic GPS Challenge to seek community input on the best practices for processing this large positioning data volume. Ten international groups answered the call, submitting 16 different position solutions calculated with a variety of software and techniques. However, the majority of solutions were corrupted by a characteristic “sawtooth” pattern which was tracked back to the aircraft receiver used in the initial challenge; for this challenge reissue, a second onboard GNSS receiver is used.  Also in this new call for participation, inertial measurement unit (IMU) data are made available for joint GPS+IMU processing.

    “To further facilitate our software and method development, we invite interested researchers and practitioners to compute and submit solutions from samples of actual GRAV-D data,” said Gerry Mader and Theresa Diehl, NGS, in an invitation email. “In this new call, NGS requests that all participants submit a GPS-only solution utilizing the new aircraft GPS data. For those able to process with IMU data, we request additional submission of a second IMU+GPS solution. NGS would like to receive all solutions by April 1, 2013.

    “This is a strictly voluntary exercise for those interested in such a comparison and we will share our results with the participants. We are also interested in possibly co-authoring a publication with the participants on the topic if results are significant.”

    Detailed information on the challenge is available here:

    Those interested in participating should read through the PDF (link above), then email Gerry Mader (gerald.l.mader at noaa.gov) and Theresa Diehl (theresa.diehl at noaa.gov) with any questions.

  • GPS Insight Adds Hours of Service to Tracking Platform

    GPS Insight, a GPS fleet tracking solution provider, announced its new GPS Insight Hours of Service Solution as an addition to its award-winning GPS Tracking software intended for fleets that need both electronic driver logs and GPS tracking combined.

    The EOBR-1000 device combines GPS tracking with an Electronic Onboard Recorder and Electronic Driver Logs. The application also integrates electronic Driver Vehicle Inspection Reports (DVIR) in a workflow environment ensuring compliance with inspections and omitting cumbersome paper forms. The HOS Solution is used to significantly reduce HOS violations, eliminate driver paperwork, and reduce log auditing time, the company said.

    GPS Insight is hosting a webinar to introduce the GPS Insight Hours of Service Solution on January 17 at 10 a.m. PST. The webinar will include an update on FMCSA rules, how an HOS solution will benefit fleets that need to be compliant, and a demonstration of the GPS Insight Hours of Service Solution. Register Here.

  • Trimble, ng Connect Collaborate on Connected Service Vehicle Demo

    Trimble’s ThingMagic Mercury6 (M6) RFID Reader will be part of the ng Connect Program’s Connected Service Vehicle, which showcases a full suite of cloud-based services designed to deliver office productivity to vehicle-based workers. In this concept vehicle, the ThingMagic reader will be used to support work-order based inventory management and tool tracking applications to illustrate aspects of a typical service visit.

    The ng Connect Program, founded by Alcatel-Lucent, is a multi-industry ecosystem dedicated to the creation of the new generation connected user experience. ng Connect is comprised of more than 190 Contributing and Associate member companies including network, consumer electronics, application and content providers. Twelve proof of concept demos will be featured this year in the Alcatel-Lucent CES booth at the 2013 Consumer Electronics Show, January 8-11, in Las Vegas.

    As a collaborating member of the ng Connect program, Trimble is providing the development platform for in-vehicle RFID solutions and sensor technology for high-volume commercial, industrial and enterprise applications. Achievements in the automotive market include receiving the Ford World Excellence Award for contributions to a first-to-market RFID-enabled solution designed to help contractors track and manage their tools.

    “We’re honored to join the ecosystem of innovative, market-shaping companies in the ng Connect program,” said Bernd Schoner, vice president of business development at Trimble’s ThingMagic Division. “Using the vehicle as the basic point of data capture can enhance productivity. Uploading asset information from the vehicle to a central data aggregation layer for anywhere, anytime consumption by a variety of applications is the future.”

  • Agero Unveils Auto Infotainment Development Kit

    Agero Connected Services has announced the development of the AgeroView DevKit, a new cross-platform toolkit designed to accelerate the deployment of cloud-based automotive infotainment system applications. The DevKit includes specialized APIs (Application Programming Interfaces) and associated support to enable access to a variety of in-vehicle platforms ranging from safety and GPS positioning to multimedia and climate control.

    The DevKit, which will include an application software development kit (SDK) as well as a hardware evaluation kit, will be evaluated by select automakers during the first half of 2013 before its release.

    According to Agero, the launch of the AgeroView DevKit will remove significant barriers that constrain today’s in-vehicle infotainment systems. Until now, infotainment system features have always remained relatively static over the course of the vehicle’s lifetime. With the DevKit, automakers and developers can deploy more exciting and convenient experiences even years after the vehicle is sold. Drivers and passengers will be able to personalize their device interfaces on demand, and dealers will have the opportunity to introduce new content and interfaces.

    The AgeroView DevKit will allow the deployment of far more efficient and practical applications, particularly those involving navigation, messaging, and safety/diagnostics. Motorists will receive  the added value created by the vehicle’s ever-improving array of functions, content, and service offerings.

    “With the AgeroView DevKit, automakers will now be able to target the applications critical to their brand and quickly deliver a user experience that builds brand equity,” said Frank Hirschenberger, Agero’s senior director of Innovation. “Moreover, the DevKit lets developers create apps with a simple, easy-to-learn interface that takes into account evolving knowledge on minimizing driver distraction.”

    The AgeroView DevKit also provides the critical portal between Agero’s AgeroView in-vehicle cloud services and the in-vehicle electronics. The DevKit makes it simple for developers to write and validate production-ready, automotive-centric apps through the use of standard Web technologies, the company said.

    The AgeroView DevKit resides as a component in the AgeroView cloud platform developed by Agero in partnership with M-Way Solutions, GmbH. The platform gives automakers and vehicle owners the flexibility to substitute providers of specific content such as navigation, entertainment, and news as well as customize graphic and audio interfaces whenever desired.

  • iOnRoad Steers iPhone Navigation Towards Safer Driving

    iOnRoad,  the maker of the iOnRoad app that improves driving in real-time using the power of modern computer vision algorithms and smart-phone cameras, has released its award-winning app on iOS 6 operating systems. iOnRoad, now available for immediate download in the App Store, is taking advantage of the leap in processing power of the iPhone 5 and  new navigation integration offered on iOS 6, the company said.

    iOnRoad’s new iOS 6 features bring about a whole new depth to driving assistance applications. The iOnRoad application’s advanced fusion with iOS 6 navigation allows the driver the benefit of turn-by-turn navigation along with iOnRoad’s augmented driving UI. Furthermore, iOnRoad’s new “black-box” like video recording feature acts as a virtual driving log, archiving users’ driving history. Should an accident occur, drivers may now be given a greater understanding of the events leading up to it.

    “We have serviced hundreds of thousands of mobile users over the past year and are excited to provide iPhone users an enhanced version of iOnRoad,” said Alon Atsmon, CEO of iOnRoad. “In addition, the new in-phone analytics dashboard tells a driver how safe and ‘green’ the drive was and can even estimate gas prices, which is quite useful given the fluctuation in gas prices today.”

    iOnRoad uses the iPhone camera and sensors to detect lanes and vehicles in front of the vehicle, alerting drivers when they are in danger. The app provides a range of personal driving assistance functions including augmented driving, collision warning, speeding alert and safety scoring.

    “We are witnessing a trend in which  systems and features that we used to find in jet-planes such as navigation, collision warnings, HUD and night vision are increasingly finding their way into the driving environment,” says Atsmon. iOnRoad’s innovation and market leadership has been validated by numerous industry awards including the 2012 CTIA E-Tech Award, CES 2012 showcase award, and one of Gartner’s cool vendors in automotive for 2012.

    View a video of iOnRoad in action.