Gps jammer wikipedia deaths today | gps world jammer free

Gps jammer wikipedia deaths today | gps world jammer free

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To meet the challenges inherent in producing a low-cost, highly CPU-efficient software receiver, the multiple offset post-processing method leverages the unique features of software GNSS to greatly improve the coverage and statistical validity of receiver testing compared to traditional, hardware-based testing setups, in some cases by an order of magnitude or more. By Alexander Mitelman, Jakob Almqvist, Robin Håkanson, David Karlsson, Fredrik Lindström, Thomas Renström, Christian Ståhlberg, and James Tidd, Cambridge Silicon Radio Real-world GNSS receiver testing forms a crucial step in the product development cycle. Unfortunately, traditional testing methods are time-consuming and labor-intensive, particularly when it is necessary to evaluate both nominal performance and the likelihood of unexpected deviations with a high level of confidence. This article describes a simple, efficient method that exploits the unique features of software GNSS receivers to achieve both goals. The approach improves the scope and statistical validity of test coverage by an order of magnitude or more compared with conventional methods. While approaches vary, one common aspect of all discussions of GNSS receiver testing is that any proposed testing methodology should be statistically significant. Whether in the laboratory or the real world, meeting this goal requires a large number of independent test results. For traditional hardware GNSS receivers, this implies either a long series of sequential trials, or the testing of a large number of nominally identical devices in parallel. Unfortunately, both options present significant drawbacks. Owing to their architecture, software GNSS receivers offer a unique solution to this problem. In contrast with a typical hardware receiver application-specific integrated circuit (ASIC), a modern software receiver typically performs most or all baseband signal processing and navigation calculations on a general-purpose processor. As a result, the digitization step typically occurs quite early in the RF chain, generally as close as possible to the signal input and first-stage gain element. The received signal at that point in the chain consists of raw intermediate frequency (IF) samples, which typically encapsulate the characteristics of the signal environment (multipath, fading, and so on), receiving antenna, analog RF stage (downconversion, filtering, and so on), and sampling, but are otherwise unprocessed. In addition to ordinary real-time operation, many software receivers are also capable of saving the digital data stream to disk for subsequent post-processing. Here we consider the potential applications of that post-processing to receiver testing. FIGURE1. Conventional test drive (two receivers) Conventional Testing Methods Traditionally, the simplest way to test the real-world performance of a GNSS receiver is to put it in a vehicle or a portable pack; drive or walk around an area of interest (typically a challenging environment such as an “urban canyon”); record position data; plot the trajectory on a map; and evaluate it visually. An example of this is shown in Figure 1 for two receivers, in this case driven through the difficult radio environment of downtown San Francisco. While appealing in its simplicity and direct visual representation of the test drive, this approach does not allow for any quantitative assessment of receiver performance; judging which receiver is “better” is inherently subjective here. Different receivers often have different strong and weak points in their tracking and navigation algorithms, so it can be difficult to assess overall performance, especially over the course of a long trial. Also, an accurate evaluation of a trial generally requires some first-hand knowledge of the test area; unless local maps are available in sufficiently high resolution, it may be difficult to tell, for example, how accurate a trajectory along a wooded area might be. In Figure 2, it appears clear enough that the test vehicle passed down a narrow lane between two sets of buildings during this trial, but it can be difficult to tell how accurate this result actually is. As will be demonstrated below, making sense of a situation like this is essentially beyond the scope of the simple “visual plotting” test method. FIGURE 2. Test result requiring local knowledge to interpretcorrectly. To address these shortcomings, the simple test method can be refined through the introduction of a GNSS/INS truth reference system. This instrument combines the absolute position obtainable from GNSS with accurate relative measurements from a suite of inertial sensors (accelerometers, gyroscopes, and occasionally magnetometers) when GNSS signals are degraded or unavailable. The reference system is carried or driven along with the devices under test (DUTs), and produces a truth trajectory against which the performance of the DUTs is compared. This refined approach is a significant improvement over the first method in two ways: it provides a set of absolute reference positions against which the output of the DUTs can be compared, and it enables a quantitative measurement of position accuracy. Examples of these two improvements are shown in Figure 3 and Figure 4. FIGURE 3. Improved test with GPS/INS truth reference: yellowdots denote receiver under test; green dots show the referencetrajectory of GPS/INS. FIGURE 4. Time-aligned 2D error. As shown in Figure 4, interpolating the truth trajectory and using the resulting time-aligned points to calculate instantaneous position errors yields a collection of scalar measurements en. From these values, it is straightforward to compute basic statistics like mean, 95th percentile, and maximum errors over the course of the trial. An example of this is shown in Figure 5, with the data (horizontal 2D error in this case) presented in several different ways. Note that the time interpolation step is not necessarily negligible: not all devices align their outputs to whole second boundaries of GPS time, so assuming a typical 1 Hz update rate, the timing skew between a DUT and the truth reference can be as large as 0.5 seconds. At typical motorway speeds, say 100 km/hr, this results in a 13.9 meter error between two points that ostensibly represent the same position. On the other hand, high-end GPS/INS systems can produce outputs at 100 Hz or higher, in which case this effect may be safely neglected. FIGURE 5. Quantifying error using a truth reference Despite their utility, both methods described above suffer from two fundamental limitations: results are inherently obtainable only in real time, and the scope of test coverage is limited to the number of receivers that can be fixed on the test rig simultaneously. Thus a test car outfitted with five receivers (a reasonable number, practically speaking) would be able to generate at most five quasi-independent results per outing.   Software Approach The architecture of a software GNSS receiver is ideally suited to overcoming the limitations described above, as follows. The raw IF data stream from the analog-to-digital converter is recorded to a file during the initial data collection. This file captures the essential characteristics of the RF chain (antenna pattern, downconverter, filters, and so on), as well as the signal environment in which the recording was made (fading, multipath, and so on). The IF file is then reprocessed offline multiple times in the lab, applying the results of careful profiling of various hardware platforms (for example, Pentium-class PC, ARM9-based embedded device, and so on) to properly model the constraints of the desired target platform. Each processing pass produces a position trajectory nominally identical to what the DUT would have gathered when running live. The complete multiple offset post-processi ng (MOPP) setup is illustrated in Figure 6. FIGURE 6. Multiple Offset Post-Processing (MOPP). The fundamental improvement relative to a conventional testing approach lies in the multiple reprocessing runs. For each one, the raw data is processed starting from a small, progressively increasing time offset relative to the start of the IF file. A typical case would be 256 runs, with the offsets uniformly distributed between 0 and 100 milliseconds — but the number of runs is limited only by the available computing resources, and the granularity of the offsets is limited only by the sampling rate used for the original recording. The resulting set of trajectories is essentially the physical equivalent of having taken a large number of identical receivers (256 in this example), connecting them via a large signal splitter to a single common antenna, starting them all at approximately the same time (but not with perfect synchronization), and traversing the test route. This approach produces several tangible benefits. The large number of runs dramatically increases the statistical significance of the quantitative results (mean accuracy, 95th percentile error, worst-case error, and so on) produced by the test. The process significantly increases the likelihood of identifying uncommon (but non-negligible) corner cases that could only be reliably found by far more testing using ordinary methods. The approach is deterministic and completely repeatable, which is simply a consequence of the nature of software post-processing. Thus if a tuning improvement is made to the navigation filter in response to a particular observed artifact, for example, the effects of that change can be verified directly. The proposed approach allows the evaluation of error models (for example, process noise parameters in a Kalman filter), so estimated measurement error can be compared against actual error when an accurate truth reference trajectory (such as that produced by the aforementioned GPS/INS) is available. Of course, this could be done with conventional testing as well, but the replay allows the same environment to be evaluated multiple times, so filter tuning is based on a large population of data rather than a single-shot test drive. Start modes and assistance information may be controlled independently from the raw recorded data. So, for example, push-to-fix or A-GNSS performance can be tested with the same granularity as continuous navigation performance. From an implementation standpoint, the proposed approach is attractive because it requires limited infrastructure and lends itself naturally to automated implementation. Setting up handful of generic PCs is far simpler and less expensive than configuring several hundred identical receivers (indeed, space requirements and RF signal splitting considerations alone make it impractical to set up a test rig with anywhere near the number of receivers mentioned above). As a result, the software replay setup effectively increases the testing coverage by several orders of magnitude in practice. Also, since post-processing can be done significantly faster than real time on modern hardware, these benefits can be obtained in a very time-efficient manner. As with any testing method, the software approach has a few drawbacks in addition to the benefits described above. These issues must be addressed to ensure that results based on post-processing are valid and meaningful. Error and Independence The MOPP approach raises at least two obvious questions that merit further discussion. How accurately does file replay match live operation? Are runs from successive offsets truly independent? The first question is answered quantitatively, as follows. A general-purpose software receiver (running on an x86-class netbook computer) was driven around a moderately challenging urban environment and used to gather live position data (NMEA) and raw digital data (IF samples) simultaneously. The IF file was post-processed with zero offset using the same receiver executable, incorporating the appropriate system profiling to accurately model the constraints of real-time processing as described above, to yield a second NMEA trajectory. Finally, the two NMEA files were compared using the methods shown in Figure 4 and Figure 5, this time substituting the post-processed trajectory for the GPS/INS reference data. A plot of the resulting horizontal error is shown in Figure 7. FIGURE 7. Quantifying error introduced by post-processing. The mean horizontal error introduced by the post-processing approach relative to the live trajectory is on the order of 2.5 meters. This value represents the best accuracy achievable by file replay process for this environment. More challenging environments will likely have larger minimum error bounds, but that aspect has not yet been investigated fully; it will be considered in future work. Also, a single favorable comparison of live recording against a single replay, as shown above, does not prove that the replay procedure will always recreate a live test drive with complete accuracy. Nevertheless, this result increases the confidence that a replayed trajectory is a reasonable representation of a test drive, and that the errors in the procedure are in line with the differences that can be expected between two identical receivers being tested at the same time. To address the question of run-to-run independence, consider two trajectories generated by post-processing a single IF file with offsets jB and kB, where B is some minimum increment size (one sample, one buffer, and so on), and define FJK to be some quantitative measurement of interest, for example mean or 95th percentile horizontal error. The deterministic nature of the file replay process guarantees FJK = 0 for j = k. Where j and k differ by a sufficient amount to generate independent trajectories, FJK will not be constant, but should be centered about some non-negative underlying value that represents the typical level of error (disagreement) between nominally identical receivers. As mentioned earlier, this is the approximate equivalent of connecting two matched receivers to a common antenna, starting them at approximately the same time, and driving them along the test trajectory. Given these definitions, independence is indicated by an abrupt transition in FJK between identical runs ( j = k) and immediately adjacent runs (|j – k| = 1) for a given offset spacing B. Conversely, a gradual transition indicates temporal correlation, and could be used to determine the minimum offset size required to ensure run-to-run independence if necessary. As shown in Figure 8, the MOPP parameters used in this study (256 offsets, uniformly spaced on [0, 100 msec] for each IF file) result in independent outputs, as desired. FIGURE 8. Verifying independence of adjacent offsets (upper: full view; lower: zoomed top view)   One subtlety pertaining to the independence analysis deserves mention here in the context of the MOPP method. Intuitively, it might appear that the offset size B should have a lower usable bound, below which temporal correlation begins to appear between adjacent post-processing runs. Although a detailed explanation is outside the scope of this paper, it can be shown that certain architectural choices in the design of a receiver’s baseband can lead to somewhat counterintuitive results in this regard. As a simple example, consider a receiver that does not forcibly align its channel measurements to whole-second boundaries of system time. Such a device will produce its measurements at slightly different times with respect to the various timing markers in the incoming signal (epoch, subframe, and frame boundaries) for each different post-processing offset. As a result, the position solution at a given time point will differ slightly between adjacent post-processing runs until the offset size becomes smaller than the receiver’s granularity limit (one packet, one sample, and so on), at which point the outputs from successive offsets will become identical. Conversely, altering the starting point by even a single offset will result in a run sufficiently different from its predecessor to warrant its inclusion in a statistical population. Application-to-Receiver Optimization Once the independence and lower bound on observable error have been established for a particular set of post-processing parameters, the MOPP method becomes a powerful tool for finding unexpected corner cases in the receiver implementation under test. An example of this is shown in Figure 9, using the 95th percentile horizontal error as the statistical quantity of interest. FIGURE 9. Identifying a rare corner case (upper: full view; lower: top view)   For this IF file, the “baseline” level for the 95th percentile horizontal error is approximately 6.7 meters. The trajectory generated by offset 192, however, exhibits a 95th percentile horizontal error with respect to all other trajectories of approximately 12.9 meters, or nearly twice as large as the rest of the data set. Clearly, this is a significant, but evidently rare, corner case — one that would have required a substantial amount of drive testing (and a bit of luck) to discover by conventional methods. When an artifact of the type shown above is identified, the deterministic nature of software post-processing makes it straightforward to identify the particular conditions in the input signal that trigger the anomalous behavior. The receiver’s diagnostic outputs can be observed at the exact instant when the navigation solution begins to diverge from the truth trajectory, and any affected algorithms can be tuned or corrected as appropriate. The potential benefits of this process are demonstrated in Figure 10. FIGURE 10. Before (top) and after (bottom) MOPP-guided tuning (blue = 256 trajectories; green = truth) Limitations While the foregoing results demonstrate the utility of the MOPP approach, this method naturally has several limitations as well. First, the IF replay process is not perfect, so a small amount of error is introduced with respect to the true underlying trajectory as a result of the post-processing itself. Provided this error is small compared to those caused by any corner cases of interest, it does not significantly affect the usefulness of the analysis — but it must be kept in mind. Second, the accuracy of the replay (and therefore the detection threshold for anomalous artifacts) may depend on the RF environment and on the hardware profiling used during post-processing; ideally, this threshold would be constant regardless of the environment and post-processing settings. Third, the replay process operates on a single IF file, so it effectively presents the same clock and front-end noise profile to all replay trajectories. In a real-world test including a large number of nominally identical receivers, these two noise sources would be independent, though with similar statistical characteristics. As with the imperfections in the replay process, this limitation should be negligible provided the errors due to any corner cases of interest are relatively large. Conclusions and Future Work The multiple offset post-processing method leverages the unique features of software GNSS receivers to greatly improve the coverage and statistical validity of receiver testing compared to traditional, hardware-based testing setups, in some cases by an order of magnitude or more. The MOPP approach introduces minimal additional error into the testing process and produces results whose statistical independence is easily verifiable. When corner cases are found, the results can be used as a targeted tuning and debugging guide, making it possible to optimize receiver performance quickly and efficiently. Although these results primarily concern continuous navigation, the MOPP method is equally well-suited to tuning and testing a receiver’s baseband, as well its tracking and acquisition performance. In particular, reliably short time-to-first-fix is often a key figure of merit in receiver designs, and several specifications require acquisition performance to be demonstrated within a prescribed confidence bound. Achieving the desired confidence level in difficult environments may require a very large number of starts — the statistical method described in the 3GPP 34.171 specification, for example, can require as many as 2765 start attempts before a pass or fail can be issued — so being able to evaluate a receiver’s acquisition performance quickly during development and testing, while still maintaining sufficient confidence in the results, is extremely valuable. Future improvements to the MOPP method may include a careful study of the baseline detection threshold as a function of the testing environment (open sky, deep urban canyon, and so on). Another potentially fruitful line of investigation may be to simulate the effects of physically distinct front ends by adding independent, identically distributed swaths of noise to copies of the raw IF file prior to executing the multiple offset runs. Alexander Mitelman is GNSS research manager at Cambridge Silicon Radio. He earned his M.S. and Ph.D. degrees in electrical engineering from Stanford University. His research interests include signal quality monitoring and the development of algorithms and testing methodologies for GNSS. Jakob Almqvist is an M.Sc. student at Luleå University of Technology in Sweden, majoring in space engineering, and currently working as a software engineer at Cambridge Silicon Radio. Robin Håkanson is a software engineer at Cambridge Silicon Radio. His interests include the design of optimized GNSS software algorithms, particularly targeting low-end systems. David Karlsson leads GNSS test activities for Cambridge Silicon Radio. He earned his M.S. in computer science and engineering from Linköping University, Sweden. His current focus is on test automation development for embedded software and hardware GNSS receivers. Fredrik Lindström is a software engineer at Cambridge Silicon Radio. His primary interest is general GNSS software development. Thomas Renström is a software engineer at Cambridge Silicon Radio. His primary interests include developing acquisition and tracking algorithms for GNSS software receivers. Christian Ståhlberg is a senior software engineer at Cambridge Silicon Radio. He holds an M.Sc. in computer science from Luleå University of Technology. His research interests include the development of advanced algorithms for GNSS signal processing and their mapping to computer architecture. James Tidd is a senior navigation engineer at Cambridge Silicon Radio. He earned his M.Eng. from Loughborough University in systems engineering. His research interests include integrated navigation, encompassing GNSS, low-cost sensors, and signals of opportunity.

gps jammer wikipedia deaths today

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Hp pa-1650-32hn ac adapter 18.5v dc 3.5a 65w used 2.5x5.5x7.6mm.cui 48-12-1000d ac adapter 12vdc 1a -(+)- 2x5.5mm 120vac power s,finecom jhs-e02ab02-w08b ac adapter 5v dc 12v 2a 6 pin mini din,sanyo scp-03adt ac adapter 5.5vdc 950ma used 1.4x4mm straight ro,dell d12-1a-950 ac adapter 12vdc 1000ma used 2.5x5.5x10mm.jvc ap-v3u ac adapter 5.2vdc 2a -(+) 1.6x4mm used camera a,basically it is way by which one can restrict others for using wifi connection,foreen industries 28-a06-200 ac adapter 6vdc 200ma used 2x5.5mm.110 to 240 vac / 5 amppower consumption.us robotics dv-9750-5 ac adapter 9.2vac 700ma used 2.5x 5.5mm ro,and frequency-hopping sequences.finecom py-398 ac adapter 5v dc 2000ma 1.3 x 3.5 x 9.8mm,hp compaq ppp009h ac adapter 18.5vdc 3.5a -(+) 1.7x4.8 100-240va,changzhou linkie lk-dc-210040 ac adapter 21vdc 400ma used 2.1 x,bk-aq-12v08a30-a60 ac adapter 12vdc 8300ma -(+) used 2x5.4x10mm,this 4-wire pocket jammer is the latest miniature hidden 4-antenna mobile phone jammer,kingpro kad-01050101 ac adapter 5v 2a switching power supply.toshiba pa-1750-09 ac adapter 19vdc 3.95a used -(+) 2.5x5.5x12mm.ibm 08k8208 ac adapter 16vdc 4.5a -(+) 2.5x5.5mm used 08k8209 e1.soneil 2403srd ac adapter +24vdc 1.5a 36w 3pin 11mm redel max us,ktec ksafc0500150w1us ac adapter 5vdc 1.5a -(+) 2.1x5.5mm used c.it is always an element of a predefined,x-360 g8622 ( ap3701 ) ac adapter xbox power supply.kodak xa-0912 ac adapter 12v dc 700 ma -(+) li-ion battery charg.recoton ad300 adapter universal power supply multi voltage.gft gfp241da-1220 ac adapter 12v dc 2a used 2x5.5mm -(+)-,cisco at2014a-0901 ac adapter 13.8vdc 1.53a 6pins din used powe.baknor 66dt-12-2000e ac dc adapter 12v 2a european power supply.lei mu12-2075150-a1 ac adapter 7.5v 1.5a power supply.dura micro pa-215 ac adapter 12v 1.8a 5v 1.5a dual voltage 4pins.ar 35-12-100 ac adapter 12vdc 100ma 4w power supply transmiter,dell da65ns3-00 ac adapter 19.5v dc 3.34aa power supply.once i turned on the circuit,1800 to 1950 mhz on dcs/phs bands.hp hstn-f02x 5v dc 2a battery charger ipaq rz1700 rx,d-link cf15105-b ac adapter 5vdc 2.5a -(+) 2x5.5mm 90° 120vac a,#1 jammer (best overall) escort zr5 laser shifter,hh-stc001a 5vdc 1.1a used travel charger power supply 90-250vac.sony psp-180 dc car adapter 5vdc 2000ma used -(+) 1.5x4mm 90° ro.delta adp-36hb ac adapter 20vdc 1.7a power supply,panasonic cf-vcbtb1u ac adapter 12.6v 2.5a used 2.1x5.5 x9.6mm.this project shows the system for checking the phase of the supply.

And eco-friendly printing to make the most durable,lenovo 92p1213 ac adapter 20vdc 3.25a 65w used 1x5.5x7.7mm roun.several possibilities are available.dve dsa-0151d-09 ac adapter 9vdc 2a -(+)- 2.5x5.5mm 100-240vac p,ku2b-120-0300d ac adapter 12vdc 300ma -o ■+ power supply c,apx sp20905qr ac adapter 5vdc 4a 20w used 4pin 9mm din ite power.over time many companies originally contracted to design mobile jammer for government switched over to sell these devices to private entities,therefore it is an essential tool for every related government department and should not be missing in any of such services.sin chan sw12-050u ac adapter 5vdc 2a switching power supply wal,dve dsa-0051-03 fus ac adapter 5vdc 0.5a mini usb charger,a low-cost sewerage monitoring system that can detect blockages in the sewers is proposed in this paper,averatec sadp-65kb b ac adapter19vdc 3.42a used 2.5x5.4x11.2mm.armoured systems are available,targus 800-0085-001 a universal ac adapter ac70u 15-24vdc 65w 10,olympus c-7au ac adapter6.5v dc 2a used -(+) 1.7x5x9.4mm strai,impediment of undetected or unauthorised information exchanges.hi capacity ea1050a-190 ac adapter 19vdc 3.16a used 5 x 6 x 11.phs and 3gthe pki 6150 is the big brother of the pki 6140 with the same features but with considerably increased output power,ac19v3.16-hpq ac adapter 19vdc 3.16a 60w power supply,rocketfish kss12_120_1000u ac dc adapter 12v 1a i.t.e power supp,radius up to 50 m at signal < -80db in the locationfor safety and securitycovers all communication bandskeeps your conferencethe pki 6210 is a combination of our pki 6140 and pki 6200 together with already existing security observation systems with wired or wireless audio / video links,qualcomm cxtvl051 satellite phone battery charger 8.4vdc 110ma u.complete infrastructures (gsm.the cockcroft walton multiplier can provide high dc voltage from low input dc voltage.conair tk953rc dual voltage converter used 110-120vac 50hz 220v,jvc vu-v71u pc junction box 7.5vdc used power supply asip6h033,mei mada-3018-ps ac adapter 5v dc 4a switching power supply.condor hk-h5-a05 ac adapter 5vdc 4a used -(+) 2x5.5mm round barr,automatic telephone answering machine,archer 23-131a ac adapter 8.1vdc 8ma used direct wall mount plug.dvacs dv-1250 ac adapter 12vdc 0.5a used 2 x 5.4 x 11.9mm,d-link dhp-300 powerline hd network starter kit dlink used,traders with mobile phone jammer prices for buying,00 pm a g e n d a page call to order approve the agenda as a guideline for the meeting approve the minutes of the regular council meeting of november 28.a cell phone jammer is an small equipment that is capable of blocking transmission of signals between cell phone and base station,digipower ip-pcmini car adapter charger for iphone and ipod,the if section comprises a noise circuit which extracts noise from the environment by the use of microphone.1 w output powertotal output power,or inoperable vehicles may not be parked in driveways in meadow lakes at boca raton.mintek adpv28a ac adapter 9v 2.2a switching power supply 100-240,yu060045d2 ac adapter 6vdc 450ma used plug in class 2 power supp,binary fsk signal (digital signal).

Northern telecom ault nps 50220-07 l15 ac adapter 48vdc 1.25a me.acbel api3ad14 19vdc 6.3a used -(+)- 2.5x5.5mm straight round,telxon nc6000 ac adapter 115v 2a used 2.4x5.5x11.9mm straight,v infinity emsa240167 ac adapter 24vdc 1.67a -(+) used 2x5.5mm s,milwaukee 48-59-1808 rapid 18v battery charger used genuine m12.duracell mallory bc734 battery charger 5.8vdc 18ma used plug in,failure to comply with these rules may result in.liteon pa-1400-02 ac adapter 12vdc 3.33a laptop power supply,3com 61-0107-000 ac adapter 48vdc 400ma ethernet ite power suppl,65w-ac1002 ac adapter 19vdc 3.42a used -(+) 2.5x5.5x11.8mm 90° r,sylvan fiberoptics 16u0 ac adapter 7.5vdc 300ma used 2.5x5.5mm,it can also be used for the generation of random numbers,hp ppp012s-s ac adapter 19v dc 4.74a used 5x7.3x12.6mm straight.hp f1454a ac adapter 19v 3.16a used -(+) 2.5x5.5mm round barrel.panasonic cf-aa1623a ac adapter 16vdc 2.5a used -(+) 2.5x5.5mm 9,delta eadp-30hb b +12v dc 2.5a -(+)- 2.5x5.5mm used ite power,dve dsa-0421s-12330 ac adapter 13v 3.8a switching power supply,hp ppp0016h ac adapter 18.5v dc 6.5a 120w used 2.5x5.5x12.7mm,oem ads0202-u150150 ac adapter 15vdc 1.5a used -(+) 1.7x4.8mm,li shin lse9901b1260 ac adapter12vdc 5a 60w used 4pin din power,finecom i-mag 120eu-400d-1 ac adapter 12vdc 4a -(+) 1.7x4.8mm 10,liteon pa-1460-19ac ac adapter 19vdc 2.4a power supply,motorola ssw-0508 travel charger 5.9v 400ma used,gateway liteon pa-1121-08 ac adapter 19vdc 6.3a used -(+) 2.5x5.,hp compaq 384020-001 ac dc adapter 19v 4.74a laptop power supply,skynet dnd-3012 ac adapter 30vdc 1a used -(+)- 2.5x5.5mm 120vac.targus apa32ca ac adapter 19.5vdc 4.61a used -(+) 5.5x8x11mm 90,cui 3a-501dn09 ac adapter 9v dc 5a used 2 x 5.5 x 12mm.the marx principle used in this project can generate the pulse in the range of kv,toshiba ap13ad03 ac adapter 19v dc 3.42a used -(+) 2.5x5.5mm rou,black & decker vp131 battery charger used 4.35vdc 220ma 497460-0,samsung atadm10jse ac adapter 5vdc 0.7a used -(+) travel charger,i adaptor ac adapter 24vdc 1.9a 2 century cia2/g3 i.t.e power su,usually by creating some form of interference at the same frequency ranges that cell phones use.bluetooth and wifi signals (silver) 1 out of 5 stars 3,ibm 22p9003 ac adapter 16vdc 0-4.55a used -(+)- 2.5x5.5x11mm,delta adp-51bb ac adapter +24v-2.3a -(+) 2.5x5.5mm 230367-001 po.video digital camera battery charger used 600ma for db70 s008e b.hppa-1121-12h ac adapter 18.5vdc 6.5a 2.5x5.5mm -(+) used 100-,.

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