ADIC: Anomaly Detection Integrated Circuit in 65nm CMOS utilizing Approximate Computing
Bapi Kar, Pradeep Kumar Gopalakrishnan, Sumon Kumar Bose, Mohendra, Roy, and Arindam Basu

TL;DR
This paper introduces a low-power anomaly detection integrated circuit (ADIC) in 65nm CMOS that uses approximate computing and ensemble neural networks to achieve significant energy savings while maintaining detection accuracy.
Contribution
It presents a novel ADIC design employing ensemble neural networks and approximate computing techniques for energy-efficient anomaly detection in hardware.
Findings
Achieves 18.5x energy reduction compared to full-precision computing.
Enables dynamic neural network sizing for energy-efficient operation.
Maintains high detection accuracy with reduced energy consumption.
Abstract
In this paper, we present a low-power anomaly detection integrated circuit (ADIC) based on a one-class classifier (OCC) neural network. The ADIC achieves low-power operation through a combination of (a) careful choice of algorithm for online learning and (b) approximate computing techniques to lower average energy. In particular, online pseudoinverse update method (OPIUM) is used to train a randomized neural network for quick and resource efficient learning. An additional 42% energy saving can be achieved when a lighter version of OPIUM method is used for training with the same number of data samples lead to no significant compromise on the quality of inference. Instead of a single classifier with large number of neurons, an ensemble of K base learner approach is chosen to reduce learning memory by a factor of K. This also enables approximate computing by dynamically varying the neural…
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