An analog network classifier based on a multiplier and non-linear functions is presented in this paper, executing binary classification on breast cancer cells, and categorizing biopsies as benign or malignant tumors. An off-chip learning on-chip inference methodology is proposed for implementing a feed-forward analog artificial neural network based on fundamental design analog block circuits, realized with the aid of 90 nm CMOS technology. These circuits are meticulously designed and fine-tuned at the transistor scale to meet design criteria while minimizing power consumption. Through Spice simulations, the basic analog blocks were developed, leading to the specification of the full-chip hardware neural network. The Monte Carlo analysis of the final circuit reveals that the network achieves 96.85% accuracy and 0.9309 MCC on the Wisconsin breast cancer dataset, with a power consumption of 31.95 μW, and power supply rail of ±900 mV per analog circuit component and computational unit. The model effectively captures data patterns, providing stable, reliable, and robust predictions.
M. NouriNaser NematbakhshShokrollah Farrokhi
Yumnam Shantikumar SinghBishnulatpam Pushpa DeviKh. Manglem Singh
Mr. Gade M.RDeshpande A.S.Deshpande A.S.