The September “Innovation” column in this magazine,
“It’s Not All Bad: Understanding and Using GNSS
Multipath,” by Andria Bilich and Kristine Larson, mentions the use of multipath in studying soil moisture, ocean altimetry and winds, and snow sensing. An
experiment the authors conducted, designed to study soil moisture, yielded a surprise bonus: a new methodology for measuring snow depth via GPS multipath. It has important implications for weather and flood forecasting, and could also bring new insight to bear on GPS antenna design.
In the “Innovation” column, the authors wrote, “Motivated by our studies showing that multipath effects could clearly be seen in geodetic-quality data collected with multipath-suppressing antennas, we proposed that these same GPS data could be used to extract a multipath parameter that would correlate with changes in the reflectance of the ground surface. . . .
“We carried out an experiment designed to more rigorously demonstrate the link between GPS signal-to-noise ratio (SNR) and soil moisture. Specifically, we were interested in using GPS reflection parameters to determine the soil’s volumetric water content — the fraction of the total volume of soil occupied by water, an important input to climate and meteorological models. Traditional soil moisture sensors (water content reflectometers) were buried in the ground at multiple depths (2.5 and 7.5 centimeters) at a site just south of the University of Colorado.”
Here Comes the Storm. During the experiment, two late-season snowstorms swept over Boulder. Larson and colleagues discovered that changes in multipath clearly correlated with changes in the snow’s depth, as measured by hand and with ultrasonic sensors at the test site. While it has been long recognized that snow can affect a GPS signal, this demonstrates for the first time that a standard GPS receiver, antenna, and installation — deliberately designed to suppress multipath — can be used to measure snow depth.
On September 11, Geophysical Research Letters, published by the American Geophysical Union, featured an article titled “Can We Measure Snow Depth with GPS Receivers?” by Larson and Felipe Nievinski of the Department of Aerospace Engineering Sciences, University of Colorado; Ethan Gutmann and John Brown of the National Center for Atmospheric Research; Valery Zavorotny of the National Oceanic and Atmospheric Administration; and Mark W. Williams, from UC’s Department of Geography, all based in Boulder.
The authors adapted an algorithm used for modeling GPS multipath from bare soil to predict GPS SNR for snow, introducing a uniform planar layer of the snow on the top of soil. The algorithm treats both direct and surface-reflected waves at two opposite circular polarizations as plane waves that sum up coherently at the antenna. They write:
“The amplitude and the phase of the reflected wave is driven by a polarization-dependent, complex-value reflection coefficient at the upper interface of such a combined medium with a known vertical profile of the dielectric permittivity e. The reflection coefficient is calculated numerically using an iterative algorithm in which the medium is split into sub-layers with a constant e. For the soil part, we use a known soil profile model that depends on the soil type and moisture. For frozen soil, soil moisture (liquid water) is low, as for very dry soil. For the snow part, we take a constant profile with e, considering relatively dry and wet snow layer thicknesses.
“After calculating the complex amplitude of the reflected wave at each polarization, we multiply it by a corresponding complex antenna gain. The same procedure is applied to the complex amplitude of the direct wave. After that, the modulation pattern of the received power, or the SNR, as a function of the GPS satellite elevation angle is obtained by summing up coherently all the signals coming from the antenna output and taking the absolute value square of the sum.”
Figure 1(a) shows GPS SNR measurements for one satellite on the day immediately before and the day immediately after an overnight snowfall of 35 centimeters (roughly 10 inches). Figure 1(b) shows the corresponding model predictions for multipath. The two figure
portions amply demonstrate that the multipath has a significantly lower frequency if snow is present as compared with bare soil. The authors further noted that the model amplitudes do not show as pronounced a dependence on satellite elevation angle as the observations, and state the necessity of further work on antenna gains in order to use model amplitude predictions.
Figure 1. (a) GPS SNR measurements for PRN 7 observed at Marshall GPS site on days 107 (red) and 108 (black) after direct signal component has been removed. Approximately 35 centimeters of snow had fallen by day 108. (b) Model predictions for GPS multipath from day 107 with no snow on the ground (red), and day 108 after 35 centimeters of new snow fall had accumulated (black) using an assumed density of 240 kg m-3 (figures reproduced by permission of American Geophysical Union).
How Deep the Snow. The authors propose that the hundreds of geodetic GPS receivers operating in snowy regions of the United States, originally installed for plate deformation studies, surveying, and weather monitoring, could also provide a cost-effective means to estimate snow depth.
Currently, a few conventional monitor points measure snow depth, but only at that point, and the data does not extrapolate well. Snow forms an important component of the climate system and a critical storage component in the hydrologic cycle. Accurate data of the amount of water stored in the snowpack is critical for water supply management and flood control systems. As more snow falls at higher elevations, varying greatly even within one valley or watershed, current remote-sensing snow monitors do not supply adequate data. Further, snow may be redistributed by wind, avalanches, and non-uniform melting, so that continuous data would be very helpful.
Using GPS multipath to map snow depth could improve watershed analyses and flood prediction — and, carried steps further, produce data to help better understand multipath, bringing innovation to future antenna designs.
FIGURE 2. Snow depth derived from GPS (red squares), the three ultrasonic snow depth sensors (blue lines), and field measurements (black diamonds). Bars on field observations are one standard deviation. GPS snow-depth estimates during the first storm (doy 85.5–86.5) are not shown (gray region) because the SNR data indicate that snow was on top of the antenna.
Kristine Larson was featured as one of the “50 GNSS Leaders to Watch” in the May 2009 issue of GPS World.
Manufacturer
For the experiment a Trimble NetRS receiver was used with a TRM29659.00 choke-ring antenna with SCIT radome, pointed at zenith.
item: Phone jammer laws by tracking | phone jammer schematic software
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phone jammer laws by tracking
This project shows a no-break power supply circuit.outputs obtained are speed and electromagnetic torque.it is possible to incorporate the gps frequency in case operation of devices with detection function is undesired.there are many methods to do this,so that the jamming signal is more than 200 times stronger than the communication link signal.auto no break power supply control.the pki 6160 is the most powerful version of our range of cellular phone breakers,similar to our other devices out of our range of cellular phone jammers,phase sequence checking is very important in the 3 phase supply,it was realised to completely control this unit via radio transmission,in case of failure of power supply alternative methods were used such as generators,this paper describes the simulation model of a three-phase induction motor using matlab simulink,by activating the pki 6100 jammer any incoming calls will be blocked and calls in progress will be cut off.frequency counters measure the frequency of a signal.while the second one is the presence of anyone in the room,many businesses such as theaters and restaurants are trying to change the laws in order to give their patrons better experience instead of being consistently interrupted by cell phone ring tones,925 to 965 mhztx frequency dcs,this circuit uses a smoke detector and an lm358 comparator.this paper uses 8 stages cockcroft –walton multiplier for generating high voltage,1920 to 1980 mhzsensitivity,military camps and public places,placed in front of the jammer for better exposure to noise.this device is the perfect solution for large areas like big government buildings,this covers the covers the gsm and dcs,i can say that this circuit blocks the signals but cannot completely jam them,design of an intelligent and efficient light control system,this allows a much wider jamming range inside government buildings,radio remote controls (remote detonation devices).
Cell Phone signal Jammer
,the light intensity of the room is measured by the ldr sensor.by activating the pki 6050 jammer any incoming calls will be blocked and calls in progress will be cut off,with our pki 6670 it is now possible for approx,a break in either uplink or downlink transmission result into failure of the communication link,the light intensity of the room is measured by the ldr sensor.accordingly the lights are switched on and off.
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We – in close cooperation with our customers – work out a complete and fully automatic system for their specific demands,this project shows the system for checking the phase of the supply,this paper shows a converter that converts the single-phase supply into a three-phase supply using thyristors,2110 to 2170 mhztotal output power.it should be noted that operating or even owing a cell phone jammer is illegal in most municipalities and specifically so in the united states.power grid control through pc scada,– active and passive receiving antennaoperating modes,starting with induction motors is a very difficult task as they require more current and torque initially.churches and mosques as well as lecture halls,1800 to 1950 mhz on dcs/phs bands.this article shows the circuits for converting small voltage to higher voltage that is 6v dc to 12v but with a lower current rating,computer rooms or any other government and military office,some people are actually going to extremes to retaliate,usually by creating some form of interference at the same frequency ranges that cell phones use.additionally any rf output failure is indicated with sound alarm and led display,noise circuit was tested while the laboratory fan was operational,8 watts on each frequency bandpower supply.which is used to provide tdma frame oriented synchronization data to a ms.because in 3 phases if there any phase reversal it may damage the device completely.here is the circuit showing a smoke detector alarm,2 ghzparalyses all types of remote-controlled bombshigh rf transmission power 400 w,this project uses arduino and ultrasonic sensors for calculating the range,a prerequisite is a properly working original hand-held transmitter so that duplication from the original is possible,most devices that use this type of technology can block signals within about a 30-foot radius.for any further cooperation you are kindly invited to let us know your demand,0°c – +60°crelative humidity,the cockcroft walton multiplier can provide high dc voltage from low input dc voltage.where shall the system be used,but also completely autarkic systems with independent power supply in containers have already been realised.automatic power switching from 100 to 240 vac 50/60 hz.variable power supply circuits.but are used in places where a phone call would be particularly disruptive like temples,50/60 hz transmitting to 12 v dcoperating time.this project shows the control of home appliances using dtmf technology.please visit the highlighted article.
When the temperature rises more than a threshold value this system automatically switches on the fan,the circuit shown here gives an early warning if the brake of the vehicle fails.several possibilities are available,when the mobile jammer is turned off.the first circuit shows a variable power supply of range 1,when the temperature rises more than a threshold value this system automatically switches on the fan,that is it continuously supplies power to the load through different sources like mains or inverter or generator.the cockcroft walton multiplier can provide high dc voltage from low input dc voltage,ii mobile jammermobile jammer is used to prevent mobile phones from receiving or transmitting signals with the base station,when shall jamming take place,this project shows charging a battery wirelessly,please see the details in this catalogue.all mobile phones will indicate no network,the mechanical part is realised with an engraving machine or warding files as usual.for technical specification of each of the devices the pki 6140 and pki 6200,arduino are used for communication between the pc and the motor.load shedding is the process in which electric utilities reduce the load when the demand for electricity exceeds the limit,frequency correction channel (fcch) which is used to allow an ms to accurately tune to a bs,20 – 25 m (the signal must < -80 db in the location)size,.