The disclosure relates to high resolution RADAR, LIDAR and other applications. More particularly, the disclosure relates to a non-linear FM pulse compression system and method which enhances target resolution in RADAR, LIDAR and other applications.
The word RADAR is an acronym derived from the phrase RAdio Detection And Ranging and applies to electronic equipment designed for detecting and tracking objects (targets) at considerable distances. The basic principle behind radar is simple—extremely short bursts of radio energy (traveling at the speed of light) are transmitted, reflected off a target and then returned as an echo. The RADAR system correlates the return signal (appropriately corrected for gain) with the transmitted pulse to indicate the location of the target within a two or three dimensional framework. Among the various radar processing techniques, pulse compression is a signal processing technique mainly used not only in radar but also in sonar and echography to enhance the range resolution as well as the signal-to-noise ratio.
The rectangular pulse of an electromagnetic signal is given by [1]
Pr(t)=Aexp(−j2πfct)T/2≦t<T (1)
where fc is the carrier frequency.
The linear FM chirp of an RF signal is given by
PFM(t)=Aexp(−j2πfct2)T/2≦t<T (2)
Various techniques for pulse compression of electromagnetic signals using variants of frequency modulation are known in the art. These include an AM-FM laser for improved accuracy of target range measurements and a LASER RADAR system which uses an optically linear modulated FM chirp signal. Another method proposes a random FM scheme for mobile radios including a non-linear FM modulation which is carried out by driving an FM modulator with random or chaotic sequences and deriving theoretical expressions for the spectral properties of the FM waveforms.
The conventional FM chirp techniques mentioned above either use linear FM modulation or propose the use of random input sequences to create non-linear FM signals with the perfect auto correlation function properties. However, these techniques are either too complicated to implement in many applications or do not result in optimal pulse compression. Moreover, conventional pulse compression techniques may not result in a range resolution which is optimal for the application. Therefore, a non-linear FM pulse compression system and method which can result an order of magnitude improvement in pulse compression and hence dramatically improve the resolution as well as the precision of range of detected targets in RADAR, LADAR and other applications is needed.
The disclosure is generally directed to a non-linear FM pulse compression system. An illustrative embodiment of the system includes a non-linear FM transmitter adapted to receive an input signal and transmit an output signal. The non-linear FM transmitter is adapted to modulate the frequency of the output signal by at least one of the following: increasing the frequency of the output signal as a logarithmic function of the frequency of samples in the input signal; modulating the frequency of the output signal in inversely proportional relationship to the frequency of samples in the input signal; and modulating the frequency of the output signal according to a random permutation of the frequency of the input signal. At least one antenna interfaces with the non-linear FM transmitter. A non-linear FM receiver interfacing with the at least one antenna. The non-linear FM receiver is adapted to auto-correlate the output signal with a return signal.
The disclosure is further generally directed to a non-linear FM pulse compression method. An illustrative embodiment of the method includes providing an input signal; forming an output signal by modulating the frequency of the input signal by at least one of the following: increasing the frequency of the output signal as a logarithmic function of the frequency of samples in the input signal; modulating the frequency of the output signal in inversely proportional relationship to the frequency of samples in the input signal; and modulating the frequency of the output signal according to a random permutation of the frequency of the input signal; transmitting the output signal against a target; receiving a return signal from the target; and auto-correlating the output signal with the return signal.
The disclosure is further generally directed to a free electron laser system. An illustrative embodiment of the free electron laser system includes an undulator having a pair of spaced-apart parallel series of magnets having alternating poles; a laser cavity defined between the spaced-apart parallel series of magnets; and an electron source adapted to emit an electron beam through the laser cavity.
The disclosure will now be made, by way of example, with reference to the accompanying drawings, in which:
The following detailed description is merely exemplary in nature and is not intended to limit the described embodiments or the application and uses of the described embodiments. As used herein, the word “exemplary” or “illustrative” means “serving as an example, instance, or illustration.” Any implementation described herein as “exemplary” or “illustrative” is not necessarily to be construed as preferred or advantageous over other implementations. All of the implementations described below are exemplary implementations provided to enable persons skilled in the art to practice the disclosure and are not intended to limit the scope of the appended claims. Furthermore, there is no intention to be bound by any expressed or implied theory presented in the preceding technical field, background, brief summary or the following detailed description.
The disclosure is generally directed to a non-linear FM pulse compression system and method. Some embodiments may include non-linear mapping of the time sequence which results in a randomly frequency modulated signal. Some embodiments may accomplish the same result by random permutation of the carrier pulse signal.
In some embodiments, the frequency of the output non-linear FM chirp signal increases as a logarithmic function of the frequency of the samples in the input signal and is given by:
PLogFM(t)=Aexp(−j2πfc log2(t)T/2≦t<T/2 (3)
In some embodiments, the frequency changes in the non-linear FM chirp signal are inversely proportional to the frequency of the samples in the input pulse signal and are given by:
PInvFM(t)=Aexp(−j2πfc/t)T/2≦t<T/2 (4)
In some embodiments, the frequency changes of the non-linear FM chirp signal are produced by a random permutation of the input pulse signal to create a random sinusoid:
PRandomFM(t)=Random Permutation{Aexp(−j2πfc/t)}T/2≦t<T/2 (5a)
In some embodiments, the random permutation may be performed on the input to the sinusoid rather than the output:
PRandomFM(t)=Aexp(Random Permutation{−j2πfc/t})T/2≦t<T/2 (5b)
For some applications, however, performing the random permutation on the output of the sinusoidal pulse may be simpler.
Referring initially to
Referring next to
It is possible to infer from
The analytical expression for the auto correlation of the linear FM modulated signal 41 (
Where T is the width of the pulse, and Λ(t/T) is the triangle weighting function.
The maximum of the autocorrelation function of sc′ is reached at 0. Around 0, this function behaves as the sin c term. The −3 dB temporal width of that cardinal sine is more or less equal to
Everything happens as if, after matched filtering, the resolution that would have been reached with a simple pulse of duration T′ is obtained. For the common values of Δf, T′ is smaller than T, hence the pulse compression name.
Even though it cannot be rigorously proven, based on the comparisons of
Tnfm=Tfm/(M/fc) (6)
where M is the number of samples in the pulse and fc is the base frequency of the linear FM modulator and Tfm=T′.
Since energy is conserved for all three types of pulse waveforms
PrTr=PfmTfm=PnfmTnfm (7)
Where Pr, Tr, Pfm, Tfm, Pnfm and Tnfm are the power required and the main lobe half width of the rectangular pulse, linear FM modulated pulse and the nonlinear modulated FM pulse. Hence, the power required to transmit the non-linear FM modulated signal is given by
Pnfm=Pfm(Tfm/Tnfm)=Pr(Tr/Tnfm) (8)
The Radar range equation states that if τ is the time of travel of the pulse echo from the target, then the range r from the target is given by:
R=(cτ)/2 (9)
where c is the speed of light given by 3×108 m/s.
As an example, a radar experiment may include four targets closely separated by distances 270, 300, 337.5, 360, 373.5, 390.0, 427.5 and 450 meters respectively. Assuming a sampling rate of 1 Giga Hertz, the echolocations of these targets will be approximately 1800, 2000, 2250, 2400, 2490, 2600, 2850 and 3000 respectively.
In
In
In
If a continuous pulse waveform is transmitted at a base frequency of fc and the measured frequency of the received pulse is ft, then the Doppler shift fd in frequency is defined by
ft=fc+fd for approaching targets (10)
ft=fc−fd for receding targets (11)
Radar Doppler shift frequency is a function of radar transmit frequency (fo), speed of wave (c=speed of light), and target velocity (vt). Note, vt is positive (+) for approaching targets and negative (−) for receding targets:
fd=±2vtfo/c (12)
vt=±cfd/2fo (13)
It is also possible to use a CW radar system to measure range instead of range rate by frequency modulation, the systematic variation of the transmitted frequency. What this does in effect is to put a unique “time stamp” on the transmitted wave at every instant. By measuring the frequency of the return signal, the time delay between transmission and reception can be measured and therefore the range determined as before. Of course, the amount of frequency modulation must be significantly greater than the expected Doppler shift or the results will be affected.
Referring next to
The FMCW RADAR system 80 measures the instantaneous difference between the transmitted frequency 81 and the received frequency 84, Δf. This difference is directly proportional to the time delay, Δt, which is takes the radar signal to reach the target 83 and return. From this the range can be found using the usual formula, R=cΔt/2. The time delay can be found as follows:
Δt=TΔf/(f2−f1) (14)
where:
f2=maximum frequency
f1=minimum frequency
T=period of sweep from f1 to f2,
and Δf=the difference between transmitted and received.
Combining these equations into a single form for the range
R=2cTΔf/(f2−f1) (15)
where Δf is the difference between the transmitted frequency 81 and the received frequency 84 (when both are from the same sweep, i.e. when it is positive). The linear FMCW pulse 90, the log FM FMCW pulse 91, the inverse FM FMCW pulse 92 and the random sinusoid FM FMCW pulse 93 are shown below in
Referring next to
In some embodiments, the non-linear FM transmitter 101 may be adapted to modulate the frequency of an input pulse signal by increasing the frequency of the input pulse signal as a logarithmic function of the frequency of the samples in the input pulse signal, as expressed by equation (3) herein above, to generate an output non-linear FM chirp signal 113. In some embodiments, the non-linear FM transmitter 101 may be adapted to modulate the frequency of an input pulse signal such that the frequency changes in the non-linear FM chirp signal 113 are inversely proportional to the frequency of the samples in the input pulse signal as expressed by equation (4) herein above. In some embodiments, the non-linear FM transmitter 101 may be adapted to modulate the frequency of the sinusoidal input pulse signal such that the non-linear FM chirp signal 113 is a random permutation of the output of the sinusoidal input pulse signal as expressed by equation (5a) herein above. In some embodiments, the non-linear FM transmitter 101 may be adapted to modulate the frequency of the input pulse signal such that the non-linear FM chirp signal 113 is a random permutation of the input to the sinusoidal input pulse signal as expressed by equation (5b) herein above.
The non-linear FM transmitter 101 may be adapted to emit the non-linear FM signal 113 to the duplexer 103. Through the duplexer 103, the antenna 104 may be adapted to emit the non-linear FM chirp signal 113 which is generated by the non-linear FM transmitter 101 to a target (not illustrated). The non-linear FM receiver 102 may be adapted to receive a return signal 114 from the target through the duplexer 103. The synchronizer 106 may ensure that the return signal 114 is reliably interpreted by the non-linear FM receiver 102. The non-linear FM receiver 102 may additionally be adapted to auto-correlate the return signal 114 with the non-linear FM chirp signal 113 which is emitted by the antenna 104. The display 107 may be adapted to receive the auto-correlated return signal from the non-linear FM receiver 102 and display the image of the target which is generated from the auto-correlated return signal.
Referring next to
The inverter 126 may be adapted invert the time sequence 125 of an input pulse signal and emit an inverter output signal 126a having the inverted time sequence. The sinusoid generator 127 may be adapted to receive the inverter output signal 126a from the inverter 126 and generate a sinusoidal pulse 127a having the inverted time sequence. The digital to analog converter (DAC) 128 may be adapted to receive the sinusoidal pulse 127a from the sinusoid generator 127 and convert the sinusoidal pulse 127a from a digital signal to an analog non-linear FM chirp signal. The antenna 129 may be adapted to emit the non-linear FM chirp signal which is received from the DAC 128. Therefore, the frequency changes in the output non-linear FM chirp signal are inversely proportional to the frequency of the samples corresponding to the original time sequence 125 in the input sinusoidal pulse.
Referring next to
The sinusoid generator 132 may be adapted to generate a sinusoidal input pulse signal 132a having a time sequence 131. The random permutation component 133 may be adapted to produce a random permutation of the input sinusoidal pulse signal 132a and transmit a random sinusoidal pulse signal 133a to the DAC 134. The DAC 134 may be adapted to convert the digital random sinusoidal pulse signal 133a into an analog non-linear FM chirp signal which is emitted by the antenna 135.
Referring next to
The non-linear FM CW laser 110 may also include a receiving antenna 120a. An RF amplifier 119a may interface with the receiving antenna 120a. A frequency mixer 121 may interface with the RF amplifier 119a and with the power divider 118. A low pass filter 122 may interface with the frequency mixer 121. An IF amplifier 123 may interface with the low pass filter 122. The control and data acquisition circuits 116 may interface with the IF amplifier 123.
In operation of the non-linear FM CW laser 110, the oscillator of the system 100 emits a non-linear frequency-modulated sinusoidal wave signal 124. The power divider 118 divides the signal 124 into a transmitted signal 124a which is received by the RF amplifier 119 and a reference signal 124b which is received by the frequency mixer 121. After the RF amplifier 119 amplifies the transmitted signal 124a, the transmitting antenna 120 transmits the transmitted signal 124a to a target (not illustrated).
The receiving antenna 120a receives the reflected signal 124c from the target. The RF amplifier 119a amplifies the reflected signal 124c, and the frequency mixer 121 receives the amplified reflected signal 124c. At the frequency mixer 121, the reflected signal 124c mixes with the reference signal 124b. A mixed signal 124d, which is a modulated low frequency sinusoidal signal the main frequency of which is equal to the frequency difference between the reference signal 124b and the reflected signal 124c, is obtained from the output of the frequency mixer 121 and passes through the low pass filter 122 and the IF amplifier 123, respectively. At the control and data acquisition circuits 116, the mixed signal 124d is Fourier transformed into a frequency domain. The spectrum which appears on the laptop computer 117 displays all the reflection events and travel time delays between reflection events which can be calculated using the parameters such as the start and stop frequencies of the modulated oscillator of the system 100, the scanning time period and the frequency difference between reflection events.
Referring to
A recent addition to a police officer's speed detection arsenal is LIDAR (Laser Infrared Detection And Ranging). To measure a vehicle's speed, LIDAR determines how long it takes a light pulse to travel from the LIDAR gun to the vehicle and back. From this information, LIDAR can quickly find the distance between the gun and the vehicle. By making several measurements and comparing the distance the vehicle traveled between measurements, LIDAR very accurately determines the vehicle's speed. LIDAR uses a laser beam of invisible infrared light. The beam reflects off any flat surface on the vehicle. Since the beam is very narrow, it is impossible for any laser detector to determine the distance between the LIDAR source and the vehicle.
Just as there are two types of RADAR, there are also two types of lasers: Pulsed Lasers and Continuous Wave (CW) Lasers, which are used in LIDAR applications. The present disclosure includes use of the non-linear FM pulse compression system 100 for use in ranging and Doppler measurement applications.
Referring next to
The pulse compression system 100 in the ultrasound transducer 152 transmits high frequency sound pulses 161 into a patient's body 162. The sound pulses 161 travel through the patient's body 162, passing through different types of tissue. Although the average speed of sound through human tissues is 1540 m/s, it does vary with exact tissue type. While the speed of sound through fat is 1459 m/s, it passes through bone at 4080 m/s. When sound encounters two adjacent tissue types with different acoustic properties, a proportion of the sound energy is reflected as reflected sound pulses 163. These boundaries between different tissue types are called acoustic interfaces.
The amount of reflected sound pulses 163 reflected back from an acoustic interface depends on a property of the materials on either side of the interface called acoustic impedance. The acoustic impedance of a material is simply the density of the material multiplied by the speed at which sound travels through the material.
Referring next to
Referring next to
Beginning with the launch of SESAT in 1978, Synthetic Aperture Radar (SAR) have provided a wealth of information on such diverse phenomena as surface waves, internal waves, currents, upwelling, shoals, sea ice, wind and rainfall. SAR is the premier sensor for such phenomena because it is sensitive to small surface roughness changes of the order of Radar wavelength (1 millimeter down to several centimeters). It is also independent of solar illumination and is generally unaffected by cloud cover. Most modern RADARs (including SARs) transmit a pulse 175 known as linear modulated waveform and use the standard RADAR principles of range resolution and Doppler shift. Hence the linear FM pulse generator can be replaced with the pulse compression system 100 to produce higher solution in SAR images on the display 173.
Referring next to
The objects or discontinuities in the ground 181 can be cavities, voids, transitions between soil and rock, filled areas and/or buried objects. The performance of conventional GPRs is limited by attenuation of the transmitted pulse in moist soils, especially soils having high clay content. GPRs are used to detect a boundary between rock and air (a cave or cavity) or between one type of soil and another (for example undisturbed soil-to back-filled soil). The strength of the echo signal is dependent on the absorption of the signal to and from the radar to the target, the size and shape of the target, and the degree of discontinuity at the reflecting boundary.
Referring next to
Air traffic control systems are critically dependent on the use of RADAR technology for the safety of tens of thousands of aircrafts and millions of passengers every day. With the increase in air traffic, there is need for high resolution air traffic tracking systems. Currently, pulsed radars and FMCW radars are used for range measurement and Doppler measurements. With the use of the non-linear FM pulse compression system 100, the performance of the air traffic systems 190 can be significantly improved with more accurate estimation and detection of aircraft 194. In particular, the relative positions of those aircraft 194 which would otherwise come within dangerously close proximity to each other may be detected sufficiently early to prevent such close proximity and avert potential aviation accidents.
A free electron laser (FEL) is a laser which shares the same optical properties as conventional lasers such as emission of an electron beam having coherent electromagnetic radiation which can reach high power but which uses some very different operating principles to form the beam. Unlike gas, liquid or solid-state lasers such as diode lasers, in which electrons are excited in bound atomic or molecular states, FELs use a relativistic electron beam as the lasing medium which moves freely through a magnetic structure (hence the term free electron). The free electron laser has the widest frequency range of any laser type and can be widely tunable, currently ranging in the wavelength from microwaves through terahertz radiation and infrared, to the visible spectrum, to ultraviolet, to X-ray.
Referring next to
Referring next to
Referring next to
Referring next to
While the preferred embodiments of the disclosure have been described above, it will be recognized and understood that various modifications can be made in the disclosure and the appended claims are intended to cover all such modifications which may fall within the spirit and scope of the disclosure.
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