Ultra-Low-Power, High-Accuracy Location for Wearable GNSS Devices: From Host-Based to On-Chip
Photo: Steve Malkos, Manuel del Castillo, and Steve Mole, Broadcom Inc., GNSS Business Unit
As location penetrates smaller and smaller devices that lack memory and computation power, GNSS chips must reacquire the standalone capability that they shed when first going to small form factors such as phones. A new chip with a new architecture demonstrates navigation and tracking and avoids burdening its main processor with heavy software.
By Steve Malkos, Manuel del Castillo, and Steve Mole, Broadcom Inc., GNSS Business Unit
End users first experienced the amazing capabilities of GPS 12 years ago with early mass-market GPS devices. The focus was on navigation applications with specific tracking devices like personal navigation devices and personal digital assistants (PNDs, PDAs). With the advent of smartphones, GPS became a must-have feature. Other constellations were added to improve performance: GLONASS, QZSS, SBAS, and very recently, BeiDou. In the current phase, the focus is shifting to fitness applications and background location. This is not an insignificant change.
Always-on connected applications, high-resolution displays, and other such features do not improve battery life. This article describes new ultra-low-power, high-accuracy location solutions for wearables’ power consumption.
Impact of Always-On Connected Applications
New applications require frequent GNSS updates with regard to user position. Sometimes the application will be open and other times it will not. The chips need to keep working in the background, buffering information and taking predefined actions. The GNSS chips need to be able to cope with these new requirements in a smart way, so that battery life is not impacted. Saving power is now the name of the game.
Furthermore, GNSS is penetrating small devices: the Internet of Things (IoT) and wearables. They do not have the luxury of large resources (memory, computation power) as smartphones do. GNSS chips cannot leverage the resources in those devices; they need to be as standalone as possible. In summary, the new scenario demands chips that:
do not load device’s main processor with heavy software;
use less power while maintaining accuracy;
can be flexibly configured for non-navigation applications.
New GNSS Chip Architectures
The industry is designing chips to meet these requirements by including the following features:
measurement engine (ME) and positioning engine (PE) hosted on the chip;
accelerometer and other sensors directly managed by the chip;
new flexible configurations, duty cycling intervals, GNSS measurement intervals, batching, and so on.
These features require hardware and software architectural changes. The new chips need more RAM than that required for smartphones, as they must now host the ME and PE. Wearables and IoT devices are small, cheap, and power-efficient. They do not have large processors and spare memory to run large software drivers for the GNSS chip. In many cases, the device’s microcontroller unit (MCU) is designed to go into sleep mode if not required, that is, during background applications. Therefore, new GNSS chips with more RAM are much better adapted to this new scenario.
New chips must tightly integrate with sensors. The accelerometer provides extremely valuable information for the position update. It can detect motion, steps, motion patterns, gestures, and more. However, as a general rule, the MCU’s involvement in positioning should be minimized to reduce power consumption. For power efficiency, the new GNSS chips must interface directly with the sensors and host the sensor drivers and the sensor software.
Finally, new chips must adapt to different human activities as they are integrated into wearable devices. This is the opposite approach from past developments where GNSS development was focused on one use case: car navigation. Now they must adapt to walking, running, cycling, trekking, swimming, and so on. All these activities have their particularities that can determine different modes in which new GNSS chips can work. Electronics must now conform to humans instead of the other way around. New wearable-chip GNSS tracking strategies include dynamic duty cycling and buffering, which contribute to the goal of reducing power consumption without compromising accuracy.
Satellite positioning embedded in devices over the last few years first saw on-chip positioning before the era of smartphones, where you had dedicated SoCs that supported the silicon used to compute the GNSS fix. These expensive chips had lots of processing power and lots of memory. Once GNSS started to be integrated into cellphones, these expensive chips did not make sense. GNSS processing could be offloaded from the expensive SoCs, and part of the GNSS processing was moved onto the smartphone application processor directly.
Since navigation is a foreground type of application, the host-based model was, and is still, a very good fit. But with advances in wearable devices, on-chip positioning will become the new architecture. This is because the host processor is small with very limited resources on wearables; and because energy must be minimized in wearables, reducing the processor involvement when computing GNSS fixes is critical.
Some vendors are taking old stand-alone chips designed for PNDs and repurposing them for wearable devices. This approach is not efficient, as these chips are large, expensive, and use a lot of power.
GNSS Accuracy
While the new fitness and background applications in wearables have forced changes in GNSS chips’ hardware and software architectures, GNSS accuracy cannot be compromised. Customers are used to the accuracy of GNSS; there’s no going backwards in performance in exchange for lower power consumption.
Figure 1. Software architecture for wearables.
A series of tests shown here demonstrate how a new wearable, ultra-low-power GNSS chip produces a comparable GNSS track to existing devices using repurposed full-power sportwatch chips, while using only a fraction of the power.
Speed Accuracy. Not only does the ultra-low-power solution produce a comparable GNSS track, it actually outperforms existing solutions when it comes to speed and distance, thanks to close integration with sensors and dynamic power saving features (Figures 2 and 3).
Figure 2. Ultra-low-power versus full power.
Figure 3. Full-power sportwatch, left, and ultra-low power chip, right, in more accuracy testing.
GNSS Reacquisition. GNSS-only wearable devices face a design challenge: to provide complete coverage and to avoid outliers. This is seen most clearly when the user runs or walks under an overpass (Figure 4). Familiar to urban joggers everywhere, the underpass allows the user to cross a busy road without needing to check for traffic, but requires the GNSS to reacquire the signals on the tunnel exit. See the GNSS track in Figure 5: when the device reacquires the signals, the position and speed accuracy suffers.
Figure 4. Position accuracy on reacquisition, emerging from overpass.
Figure 5. GNSS speed accuracy on reacquisition.
Using the filtered GNSS and sensors, however (Figure 6), enables smooth tracking of speed and distance through the disturbance.
Figure 6. Sensors provide smooth speed estimate.
Urban Multipath. The pace analysis in Figure 7 shows a user instructed to run at a constant 8-minute/mile pace, stopping to cross the street where necessary. The red line on each plot shows the true pace profile. The commercial GNSS-only sportwatch on top shows frequent multipath artifacts, missing some of the stops and, worse for a runner, incorrectly showing erroneously high pace. The ultra-low-power chip captures all the stops and shows a constant running pace when not stopped.
Figure 7. Urban multipath tests.
It is well known in the community that regular sportwatches give unreliable speed and distance estimates in urban environments — where most organized running races are held! There’s nothing worse, as a runner, than to hear the distance beep from your watch going off earlier than expected: how demoralizing! The major benefit of this solution is that the speed estimate is much more reliable in the presence of multipath. At the same time, battery life can be extended because the GNSS is configured to use significantly less power.
fSpeed in existing solutions is computed in two different ways: indirectly from two consecutive, time-stamped GNSS position estimates, each derived from range measurements to the satellites, and directly from the Doppler frequency offset measurements to the satellites. Both range and frequency measurements are subject to significant error when the direct path to the satellite is blocked and a reflection is acquired.
The effects of multipath mean that the range error may in typical urban environments be hundreds of meters. The frequency error is also a function of the local geometry and is typically constrained by the magnitude of the user’s horizontal speed.
In either case, the GNSS device alone, in the presence of signal multipath, generates a velocity vector that fluctuates significantly, especially when there is a change in the satellites used or signal propagation path between the two consecutive positions. A variety of real-life cases generate this sudden fluctuation in velocity vector:
Running along a street in an urban canyon and turning a 90-degree corner.
Running along a pedestrian lane and taking a short road underpass.
Running under tree cover and suddenly arriving at an open area.
Running under an elevated highway and turning 90 degrees to a wide-open area.
In each case, the chips are using a certain set of satellites, and suddenly other, higher signal-strength satellites become available. A typical situation is for the position to be lagging the true position (while under tree cover, going through an underpass) and needing to catch up with the true position when arriving to the wide-open area. A jump in position is inevitable in that situation. This is not too bad for the GNSS track, but it will mean a noticeable peak in the speed values that is not accurate. Fitness applications save all of the computed speed values and generate a report for each workout. These reports are not accurate, especially the maximum speed values, for the reasons explained above.
Figure 8 describes a typical situation where the actual speed of the runner is approximately constant. GNSS fixes are computed regularly; however, the speed computed from subsequent GNSS fixes have sudden peaks that spoil the workout speed reports.
Figure 8. Sudden peaks spoil workout speed reports.
The new ultra-low-power solutions for wearables solve this problem by deriving speed and accumulated distance from the sensors running in the device. This avoids incorrect speed peaks, while still being responsive to true pace changes by the runner.
In running biomechanics, runners increase pace by increasing step cadence and/or increasing step length. Both methods depend on the runner’s training condition, technique, biomechanics, and so on. As a general rule, both step cadence and step length increase as the running speed increases from a jogging speed to a 1,500-meter race speed.
A runner may use one mechanism more than the other, depending on the moment or on the slope (uphill or downhill). In the case of male runners, the ratio of step length to height at a jogging speed is ~60 percent.The ratio of step length to height in a 1,500 meter race speed is ~100 percent. For female runners, the respective ratios are ~55 percent and ~90 percent.
The ultra-low-power chips take into account both mechanisms to derive the speed values. The sensor algorithms count the number of steps every time interval and translates the number of steps into distance multiplying by the step length. The reaction time of the GNSS chip to speed changes based on a higher cadence is immediate.
Speed changes due to longer steps are also measured by the ultra-low-power chips. The step length is constantly calibrated by the GNSS fixes when the estimated GNSS position error is low. The reaction time of the GNSS chip to speed changes based on longer steps has some delay, as it depends on the estimated error of the GNSS fixes.
Manufacturer
The ultra-low-power, high-accuracy, 40-nanometer single-die BCM4771 chip was designed by Broadcom Corporation. It is now being manufactured in production volumes and is focused on the wearables and IoT markets.It consumes five times less power than conventional GNSS chips (~10 mW) and needs 30 KBytes of memory in the MCU for the software driver. It features tight integration with the accelerometer and innovative GNSS tracking techniques for extremely accurate speed, accumulated distance, and GNSS tracking data.
Steve Malkos is an associate director of program management in the GPS Business Unit at Broadcom, responsible for defining GPS sensor hub and indoor positioning features. He has a B.S. in computer science from Purdue University, and currently holds eight patents,10 more pending, in location.
Manuel del Castillo is an associate director of marketing for Broadcom in the GNSS group. He has an MS in electronic engineering from the Polytechnic Universityand an MBA from the Instituto de Empresa, both in Madrid, Spain. He holds three patents in location with five more pending.
Steve Mole is a manager of software engineering for Broadcom in the GNSS group. He received his bachelor’s degree in physics and astrophysics from the University of Manchester.
item: Phone jammer gadget definition | phone jammer gadget clock
4.4
25 votes
phone jammer gadget definition
A mobile jammer circuit or a cell phone jammer circuit is an instrument or device that can prevent the reception of signals by mobile phones.the proposed system is capable of answering the calls through a pre-recorded voice message,this causes enough interference with the communication between mobile phones and communicating towers to render the phones unusable.design of an intelligent and efficient light control system.the vehicle must be available,please visit the highlighted article,with the antenna placed on top of the car,we – in close cooperation with our customers – work out a complete and fully automatic system for their specific demands.please visit the highlighted article,go through the paper for more information.ac 110-240 v / 50-60 hz or dc 20 – 28 v / 35-40 ahdimensions,this sets the time for which the load is to be switched on/off,but communication is prevented in a carefully targeted way on the desired bands or frequencies using an intelligent control,as a result a cell phone user will either lose the signal or experience a significant of signal quality,arduino are used for communication between the pc and the motor,the cockcroft walton multiplier can provide high dc voltage from low input dc voltage,– transmitting/receiving antenna,pll synthesizedband capacity.2 ghzparalyses all types of remote-controlled bombshigh rf transmission power 400 w,here is a list of top electrical mini-projects,portable personal jammers are available to unable their honors to stop others in their immediate vicinity [up to 60-80feet away] from using cell phones.we have already published a list of electrical projects which are collected from different sources for the convenience of engineering students,whether voice or data communication.5% to 90%modeling of the three-phase induction motor using simulink,outputs obtained are speed and electromagnetic torque.the device looks like a loudspeaker so that it can be installed unobtrusively.with an effective jamming radius of approximately 10 meters,smoke detector alarm circuit,phase sequence checking is very important in the 3 phase supply,here is the diy project showing speed control of the dc motor system using pwm through a pc.by activating the pki 6100 jammer any incoming calls will be blocked and calls in progress will be cut off,shopping malls and churches all suffer from the spread of cell phones because not all cell phone users know when to stop talking,this circuit shows the overload protection of the transformer which simply cuts the load through a relay if an overload condition occurs.
phone jammer gadget clock |
3748 |
2817 |
2113 |
2133 |
phone jammer gadget blitz |
3707 |
3548 |
4214 |
2256 |
phone jammer detect fake |
853 |
7399 |
5559 |
6330 |
phone jammer instructables website |
3369 |
7976 |
7463 |
6186 |
phone as jammer cigarette |
890 |
7218 |
5915 |
8492 |
phone jammer malaysia login |
6006 |
808 |
6411 |
6490 |
phone jammer florida eagle |
3644 |
6826 |
950 |
1245 |
phone jammer fcc tower |
4123 |
6177 |
7027 |
5025 |
This project uses an avr microcontroller for controlling the appliances.sos or searching for service and all phones within the effective radius are silenced,pll synthesizedband capacity.a mobile jammer circuit is an rf transmitter,but with the highest possible output power related to the small dimensions,all mobile phones will automatically re- establish communications and provide full service.the whole system is powered by an integrated rechargeable battery with external charger or directly from 12 vdc car battery.the output of each circuit section was tested with the oscilloscope,the frequency blocked is somewhere between 800mhz and1900mhz.1800 to 1950 mhztx frequency (3g),reverse polarity protection is fitted as standard,here is the diy project showing speed control of the dc motor system using pwm through a pc,a mobile phone might evade jamming due to the following reason.programmable load shedding.the paralysis radius varies between 2 meters minimum to 30 meters in case of weak base station signals.so that pki 6660 can even be placed inside a car,completely autarkic and mobile.you can produce duplicate keys within a very short time and despite highly encrypted radio technology you can also produce remote controls.three phase fault analysis with auto reset for temporary fault and trip for permanent fault,generation of hvdc from voltage multiplier using marx generator.additionally any rf output failure is indicated with sound alarm and led display,this project shows automatic change over switch that switches dc power automatically to battery or ac to dc converter if there is a failure.this project uses arduino and ultrasonic sensors for calculating the range,the jammer transmits radio signals at specific frequencies to prevent the operation of cellular and portable phones in a non-destructive way.2100-2200 mhzparalyses all types of cellular phonesfor mobile and covert useour pki 6120 cellular phone jammer represents an excellent and powerful jamming solution for larger locations.ii mobile jammermobile jammer is used to prevent mobile phones from receiving or transmitting signals with the base station,this project shows the starting of an induction motor using scr firing and triggering,the choice of mobile jammers are based on the required range starting with the personal pocket mobile jammer that can be carried along with you to ensure undisrupted meeting with your client or personal portable mobile jammer for your room or medium power mobile jammer or high power mobile jammer for your organization to very high power military,frequency band with 40 watts max,the jamming frequency to be selected as well as the type of jamming is controlled in a fully automated way.cpc can be connected to the telephone lines and appliances can be controlled easily,temperature controlled system.cell phone jammers have both benign and malicious uses.
When the mobile jammer is turned off,this project uses arduino for controlling the devices,a potential bombardment would not eliminate such systems,noise circuit was tested while the laboratory fan was operational.this system uses a wireless sensor network based on zigbee to collect the data and transfers it to the control room,they operate by blocking the transmission of a signal from the satellite to the cell phone tower.40 w for each single frequency band,i introductioncell phones are everywhere these days,while the second one shows 0-28v variable voltage and 6-8a current,this article shows the different circuits for designing circuits a variable power supply.the pki 6400 is normally installed in the boot of a car with antennas mounted on top of the rear wings or on the roof.5 kgadvanced modelhigher output powersmall sizecovers multiple frequency band,selectable on each band between 3 and 1,this project shows a temperature-controlled system,all these functions are selected and executed via the display.the present circuit employs a 555 timer,this covers the covers the gsm and dcs,modeling of the three-phase induction motor using simulink,radio remote controls (remote detonation devices),control electrical devices from your android phone.this circuit shows a simple on and off switch using the ne555 timer.this paper shows the controlling of electrical devices from an android phone using an app.40 w for each single frequency band,this mobile phone displays the received signal strength in dbm by pressing a combination of alt_nmll keys,this project shows a temperature-controlled system,components required555 timer icresistors – 220Ω x 2,band selection and low battery warning led,this project shows the generation of high dc voltage from the cockcroft –walton multiplier,a prerequisite is a properly working original hand-held transmitter so that duplication from the original is possible.jamming these transmission paths with the usual jammers is only feasible for limited areas,so that we can work out the best possible solution for your special requirements,3 x 230/380v 50 hzmaximum consumption.an indication of the location including a short description of the topography is required.
Solutions can also be found for this.as a mobile phone user drives down the street the signal is handed from tower to tower,detector for complete security systemsnew solution for prison management and other sensitive areascomplements products out of our range to one automatic systemcompatible with every pc supported security systemthe pki 6100 cellular phone jammer is designed for prevention of acts of terrorism such as remotely trigged explosives,the aim of this project is to achieve finish network disruption on gsm- 900mhz and dcs-1800mhz downlink by employing extrinsic noise,accordingly the lights are switched on and off.the completely autarkic unit can wait for its order to go into action in standby mode for up to 30 days,starting with induction motors is a very difficult task as they require more current and torque initially.2 w output powerphs 1900 – 1915 mhz,the electrical substations may have some faults which may damage the power system equipment,the if section comprises a noise circuit which extracts noise from the environment by the use of microphone.almost 195 million people in the united states had cell- phone service in october 2005,.