Memory Impedance for Efficient Complex-valued Neural Networks
Lead Research Organisation:
UNIVERSITY COLLEGE LONDON
Department Name: Electronic and Electrical Engineering
Abstract
AI has a hardware problem because current computing systems consume far too much energy. This is not sustainable and is rapidly becoming a critical societal challenge. The soaring demand for computing power vastly outpaces improvements made through Moore's scaling or innovative architectural solutions - the computing demands now double every 2 months. As a direct consequence, the cost of training state-of-the-art sophisticated AI models increased from a few $ in 2012 to ~$10m in 2020 [Nature 604, 255-260 (2022). ]. The challenge is even more pronounced where energy resources are limited (e.g. IoT devices). There is a pressing need to address this issue at the fundamental level and develop efficient AI systems. Memristors (memory + resistor) are a strong candidate for future non-CMOS computing solutions, capable of yielding significant energy-efficiency improvements. Specifically, arrays of memristive devices enable parallel multiply-and-accumulate (MAC) operations while mitigating the need for costly data movement, unlike much less efficient conventional von Neumann systems. However, memristors, transistors, and other computational primitives operate only on real-valued signals (either in a digital or analogue form). This is a significant limitation because complex numbers representing both amplitude and phase are much more compact and are used as a standard in biomedical sciences, physics, robotics, communications, image & audio processing, radar, etc. Computational primitives capable of directly manipulating complex-valued signals would yield much better energy efficiency and provide higher computational power using fewer elemental building blocks.
We propose to solve this problem by generalising the concept of memristance and developing fundamentally novel nanoscale electronic elements capable of directly processing complex-valued signals. Such nanoscale devices do not yet exist; however, if developed, they would enable extremely energy-efficient direct processing at the edge where signals are recorded. We propose to develop electrically programmable analogue memimpedors (memory + impedance) - new class of computational nanodevices with programmable impedance. Once working memimpedors are realised, we will explore and demonstrate their functionality by constructing memimpedor crossbars and the first hardware accelerator of complex-valued neural networks (CVNNs). CVNNs, in contrast to commonly used artificial neural networks (ANNs), use complex values for weights and activation functions, where both magnitude and phase are essential. CVNNs, although much less studied than conventional real-valued artificial neural networks, have demonstrated better performance for structures of complex-valued data [IEEE Trans. Neural Netw. Learn. Syst. 23, 541-551, (2012)] and can solve known problems in conventional ANNs (e.g. overfitting) [arXiv:2101.12249 (2021)].
This project has the potential to generate new research directions at the interface between materials science, microelectronics, AI, and be a game-changer for timely energy-efficient, highly functional AI, neuromorphic and signal processing applications. Development of memimpedors and efficient implementations of CVNN will offer new exciting avenues in deep learning and AI.
We propose to solve this problem by generalising the concept of memristance and developing fundamentally novel nanoscale electronic elements capable of directly processing complex-valued signals. Such nanoscale devices do not yet exist; however, if developed, they would enable extremely energy-efficient direct processing at the edge where signals are recorded. We propose to develop electrically programmable analogue memimpedors (memory + impedance) - new class of computational nanodevices with programmable impedance. Once working memimpedors are realised, we will explore and demonstrate their functionality by constructing memimpedor crossbars and the first hardware accelerator of complex-valued neural networks (CVNNs). CVNNs, in contrast to commonly used artificial neural networks (ANNs), use complex values for weights and activation functions, where both magnitude and phase are essential. CVNNs, although much less studied than conventional real-valued artificial neural networks, have demonstrated better performance for structures of complex-valued data [IEEE Trans. Neural Netw. Learn. Syst. 23, 541-551, (2012)] and can solve known problems in conventional ANNs (e.g. overfitting) [arXiv:2101.12249 (2021)].
This project has the potential to generate new research directions at the interface between materials science, microelectronics, AI, and be a game-changer for timely energy-efficient, highly functional AI, neuromorphic and signal processing applications. Development of memimpedors and efficient implementations of CVNN will offer new exciting avenues in deep learning and AI.
Publications

Adnan Mehonic
(2023)
Resistance Switching in Silicon Oxide for Memory and Computing Applications

Adnan Mehonic
(2024)
Resistance Switching in Silicon Oxide for Memory and Computing Applications

Sun Z
(2023)
A full spectrum of computing-in-memory technologies
in Nature Electronics
Description | In this project, we are developing novel nanoelectronic devices aimed at significantly reducing the energy consumption of artificial intelligence (AI) systems. A key innovation in our research is the extension of type of nanoelectronic device known as 'memristors' and development of novel device called "memory impedance" for designing physical complex-valued artificial neural networks. We have extended the concept of memristance to devise entirely new nanoscale electronic components that can directly process complex-valued signals, which could lead to greatly more efficient and capable computing systems. The developed devices facilitate seamless and highly energy-efficient processing at the source of complex-valued signals. The research includes the development of memimpedors, which are nanoscale devices featuring precisely tunable impedance. The collaboration with Prof Judith Driscoll at the University of Cambridge has been instrumental, and our findings have been showcased at three international conferences, garnering considerable interest. We are in the stages of drafting a journal paper and are contemplating a comprehensive project proposal to further investigate this promising avenue. |
Exploitation Route | The concept of memimpedor devices represents a novel development, and their full potential as computational units in energy-efficient nanoelectronic systems is yet to be fully explored. This initial study establishes the main concept and explores some potential uses, such as complex-valued artificial neural networks (ANNs), but there is considerable scope for further optimisation of these devices and their application in signal processing and novel computing paradigms. We anticipated the results of this funding will open a new research direction in the community. |
Sectors | Digital/Communication/Information Technologies (including Software) Electronics |
Description | Devices developed in this project are currently being explored for their practicality and industrial applicability. A patent application and the possibility of licensing to a start-up company, Intrinsic Semiconductor Technologies (www.intrinsicsemi.com), are being considered. |
First Year Of Impact | 2023 |
Sector | Electronics |
Impact Types | Economic |
Description | USyd-UCL Ignition Grants |
Amount | $22,000 (AUD) |
Organisation | University College London |
Sector | Academic/University |
Country | United Kingdom |
Start | 12/2023 |
End | 12/2024 |
Description | Collaboration with Prof Zdenka Kuncic, University of Sydney |
Organisation | University of Sydney |
Country | Australia |
Sector | Academic/University |
PI Contribution | Sharing memristor compact models. |
Collaborator Contribution | Providing simulation expertise on reservoir computing. |
Impact | The collaboration led to successful USyd-UCL Ignition Grants (£11.6k total value), with a possibility to apply for a larger grant. |
Start Year | 2023 |
Description | Prof Judith Driscoll, University of Cambridge |
Organisation | University of Cambridge |
Department | Department of Materials Science & Metallurgy |
Country | United Kingdom |
Sector | Academic/University |
PI Contribution | - Experimental testing of memristive devices |
Collaborator Contribution | - Fabrication of memristive devices |
Impact | Presentation at International conferences: - IoP Memristor 2024 - IOM3 Materials Challenges for Neuromorphic Computing - NanoGe Neuronics |
Start Year | 2023 |
Description | Attendance at international conferences |
Form Of Engagement Activity | A talk or presentation |
Part Of Official Scheme? | No |
Geographic Reach | International |
Primary Audience | Professional Practitioners |
Results and Impact | The research conducted was presented at 3 international conferences: IoP Memristor 2024 in London; Neuronics Nanoge in Valencia, Spain; and the MRS Fall Meeting 2023 in Boston, US. All three events were attended by other prominent international academics and industrial researchers. |
Year(s) Of Engagement Activity | 2024 |
Description | The Silk Road Electronic Science and Technology Forum of 2023 International Conference on the Cooperation and Integration of Industry, Education, Research and Application (ICCI-IERA) |
Form Of Engagement Activity | A talk or presentation |
Part Of Official Scheme? | No |
Geographic Reach | International |
Primary Audience | Industry/Business |
Results and Impact | Online talk delivered at 2023 International Conference on the Cooperation and Integration of Industry, Education, Research and Application (ICCI-IERA 2023), which organized by the Ministry of Education of China and Government of Shaanxi Province. ICCI-IERA 2023 combines resources of universities, research institutes and enterprises in Shaanxi and its surrounding provinces with the international partners to promote international cooperation mainly in Energy-chemical, Aeronautics and Astronautics, Emerging Material, Environmental Protection, Traditional Culture Conservation and Development domain. |
Year(s) Of Engagement Activity | 2023 |