Microwave analog signal processing: Difference between revisions

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m DDS is one example of the, Analog Signal processing core. Other cores are being developed. it is highlighted here.
 
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{{primary sources|date=November 2013}}
Microwave Real-time Analog Signal Processing (R-ASP),<ref name=ASP-mag>{{cite journal|first=Christophe|last=Caloz|author2=Gupta S. |author3=Zhang Q. |author4= Nikfal B. |title=Analog Signal Processing: A Possible Alternative or Complement to Dominantly Digital Radio Schemes|journal=IEEE Microwave Magazine|date=Sep–Oct 2013|volume=14|issue=6|pages=87–103|doi=10.1109/MMM.2013.2269862|s2cid=33284580 }}</ref><ref name=Compreesive>{{cite journal|last=Abielmona|first=Samer|author2=Gupta S. |author3=Caloz C. |title=Compressive Receiver Using a CRLH-Based Dispersive Delay Line for Analog Signal Processing|journal=IEEE Transactions on Microwave Theory and Techniques|date=Nov 2009|volume=57|issue=11|pages=2617–2626|bibcode=2009ITMTT..57.2617A|doi=10.1109/TMTT.2009.2031927|s2cid=7969178 }}</ref><ref name=RTSA>{{cite journal|last=Gupta|first=Shulabh|author2=Abielmona S. |author3=Caloz C. |title=Microwave Analog Real-Time Spectrum Analyzer (RTSA) Based on the Spectral–Spatial Decomposition Property of Leaky-Wave Structures|journal=IEEE Transactions on Microwave Theory and Techniques|date=Dec 2009|volume=57|issue=12|pages=2989–2999|bibcode=2009ITMTT..57.2989G|doi=10.1109/TMTT.2009.2034223|s2cid=18462237 }}</ref> as an alternative to [[Digital signal processing|DSP]]-based processing, might be defined as the manipulation of signals in their pristine analog form and in [[Real-time computing|real time]] to realize specific operations enabling [[microwave]] or [[millimeter-wave]] and [[Terahertz radiation|terahertz]] applications.
 
The surging demand for higher [[spectral efficiency]] in radio has spurred a renewed interest in analog real-time components and systems beyond conventional purely [[digital signal processing]] techniques. Although they are unrivaled at low microwave frequencies, due to their high flexibility, compact size, low cost and strong reliability, digital devices suffer of major issues, such as poor performance, high cost of A/D and D/A converters and excessive power consumption, at higher microwave and millimeter-wave frequencies. At such frequencies, analog devices and related real-time or [[analog signal processing]] (ASP) systems, which manipulate broadband signals in the time ___domain, may be far preferable, as they offer the benefits of lower complexity and higher speed, which may offer unprecedented solutions in the major areas of [[radio engineering]], including communications, but also radars, sensors, instrumentation and imaging. This new technology might be seen as microwave and millimeter-wave counterpart of ultra-fast optics signal processing,<ref>{{cite book|last1=Teich|first1=Bahaa E. A. Saleh; Malvin Carl|last2=Teich|first2=M. C.|title=Fundamentals of photonics|date=2007|publisher=Wiley-Interscience|___location=Hoboken, [u.a.]|isbn=978-0471358329|edition=2.}}</ref> and has been recently enabled by a wide range of novel phasers, that are components following arbitrary group delay versus frequency responses.
 
The core of microwave analog signal processing could be the dispersive delay structure (DDS) and other methods. The DDS method for example, differentiates frequency components of an input signal based on the group delay frequency response of the structure. In this structure, a linear up-chirp DDS delays higher-frequency components, while a down-chirp DDS delays lower-frequency components. This frequency-selective delay characteristic makes the DDS ideal as a foundational element in microwave analog signal processing applications, such as real-time Fourier transformation. Designing DDS systems with customizable group delay responses, especially when integrated with ultra-wideband (UWB) systems, enables a broad spectrum of applications in advanced microwave signal processing.
== Concept ==
Under construction...
 
== Applications ==
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|RADAR<ref>{{Citation |lastlast1=Melvin |firstfirst1=William L. |title=Overview: Advanced Techniques in Modern Radar |date=2012-01-01 |work=Principles of Modern Radar: Advanced techniques |pages=1–16 |url=http://dx.doi.org/10.1049/sbra020e_ch1 |access-date=2024-10-27 |publisher=Institution of Engineering and Technology |isbn=978-1-891121-53-1 |last2=Scheer |first2=James|doi=10.1049/sbra020e_ch1 |url-access=subscription }}</ref>
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'''Dispersion-code Multiple Access (DCMA):'''
 
Dispersion Code Multiple Access (DCMA) is an innovative patented<ref>{{Cite patent|number=WO2015179949A1|title=A method and apparatus for encoding data using instantaneous frequency dispersion|gdate=2015-12-03|invent1=NIKFAL|invent2=Caloz|invent3=SALEM|inventor1-first=Babak|inventor2-first=Christophe|inventor3-first=Mohamed Ahmed|url=https://patents.google.com/patent/WO2015179949}}</ref> communication technique<ref>{{Cite book |lastlast1=Cooklev |firstfirst1=Todor |url=http://dx.doi.org/10.3998/mpub.14428518 |title=Modern Communications Systems: A First Course |last2=Yagle |first2=Andrew |date=2024 |publisher=Michigan Publishing |doi=10.3998/mpub.14428518 |isbn=978-1-60785-848-5}}</ref> that leverages Chebyshev polynomials to encode and transmit multiple data streams over a shared medium. Each data input, consisting of impulses, is encoded using a distinct Chebyshev polynomial order to create unique dispersive frequency patterns. This encoding ensures that the signals are sufficiently dispersed and distinguishable, allowing multiple users or data streams to coexist without interference. The encoded signals are then transmitted simultaneously through a common channel.
 
At the receiver, the system applies an inverse Chebyshev response, acting as a dispersive delay structure to decode and recover each individual data stream. This precise decoding process ensures that even weak signals, potentially buried below the noise level, can be accurately recovered, making the technique highly robust against noise and interference. DCMA offers an efficient and reliable method for multiple access communication, suitable for applications requiring strong noise immunity and optimal spectrum utilization, such as IoT networks, wireless communication, and secure data transfer.
 
== Advantages and Challenges ==
Microwave Realreal-time Analoganalog Signalsignal Processing (R-ASP)processing presents a transformative approach to signal processing, particularly at high frequencies where traditional digital signal processing (DSP) methods face limitations. One of the primary advantages of R-ASP is its ability to manipulate signals in their pristine analog form, allowing for lower complexity and faster processing speeds. This is crucial in applications requiring high spectral efficiency, such as communications, radar, and imaging. Additionally, R-ASP leverages dispersive delay structures, or phasers, which enhance resolution and enable real-time operations without the latency often associated with digital systems.
 
However, despite its benefits, R-ASP encounters several challenges that must be addressed. The enhancement of resolution, achieved through the manipulation of group delay, often leads to increased size and insertion loss in the system. These factors can compromise efficiency and signal integrity, particularly in high-bandwidth applications. Furthermore, designing and fabricating phasers with the desired higher-order group-delay responses is technically complex and costly, which may hinder the widespread implementation of R-ASP technologies.
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== Conclusion ==
Microwave Realreal-time Analoganalog Signalsignal Processing (R-ASP)processing emerges as a crucial innovation addressing the challenges posed by purely digital signal processing at microwave and millimeter-wave frequencies. By enabling signal manipulation in its pristine analog form and leveraging dispersive delay structures such as phasers, R-ASP provides lower complexity, faster processing speeds, and reduced power consumption—critical for high-frequency applications. With its ability to perform complex operations like pulse compression, spectrum sniffing, and real-time Fourier transformation, R-ASP is transforming fields such as communication, sensing, radar, and instrumentation.
 
Despite its advantages, R-ASP faces challenges, such as increased size and insertion loss associated with resolution enhancements, as well as complexities in phaser design and fabrication for higher-order responses. However, strategic approaches—such as utilizing advanced materials, optimizing phaser designs, integrating circuit solutions, and fostering research collaboration—offer pathways to overcome these limitations.