The first stage of tactile sensing is data acquisition using tactile sensors and the sensed data is transmitted to the central unit for neuromorphic computing. The memristive crossbars were proposed to use as synapses in neuromorphic computing but device intelligence at the sensor level are not investigated in literature. We propose the concept of Transistor Memristor Sensor (TMS)-crossbar by including sensor to memristor crossbar array configuration in the input layer of the neural network architecture. 2 possible cell configurations of TMS crossbar arrays: 1 Transistor 1 Memristor 1 Sensor (1T1M1S) and 2 Transistor 1 Memristor 1 Sensor (2T1M1S) are presented. We verified the proposed TMS-crossbar in the practical design of analog neural networks based Braille character recognition system. The proposed design is verified with SPICE simulations using circuit equivalent of FLX-A501 force sensor, TiO$_2$ memristors and low power 22nm high-k CMOS transistors. The proposed analog neuromorphic computing system presents a scalable solution and is possible to encode 125 symbols with good accuracy in comparison with other Braille character recognition systems in the literature. The benefits of analog implementation of the TMS crossbar arrays is substantiated with results of accuracy, area and power requirements in comparison with the binary counterparts.
翻译:触摸感测的第一阶段是使用触摸传感器获取数据,并将感测数据传送到神经形态计算中央单位。建议使用中间十字栏作为神经形态计算中的突触,但不在文献中调查传感器一级的设备情报。我们提议在神经网络结构的输入层中加入分子感应器的感应器跨条体阵列配置。 TMS 跨条阵列的2个可能的细胞配置:1 Tristor 1 memristor 1 Sensor (T1M1M1S) 和 2 Transistor 1 memristor 1 Sensor (2T1MM1S) 。我们提议在基于盲文字符识别系统的模拟神经网络的实际设计中采用TMS 跨条概念。提议的设计经过SPICE模拟,使用相当于FLX-A501 压力传感器、 TiO$_2 memristors 和低功率 T22n-kS传感器(1TMS1S) 传感器(1T1S1S) 传感器 和 2 Transistor 1 Symal Reportal Syal Syal Syal Sy real commal commal real 的系统, 和CMSyal Inst 的系统的拟议可识别图解分校验其他可识别识别和可识别图解的可识别系统,与可变校验的系统。提议中,与可辨测的系统,与可辨测的系统,与可辨算法的系统,与可辨算法的可辨算结果。