Nonlinear mapping is an essential and common demand in online systems, such as sensor systems and mobile phones. Accelerating nonlinear mapping will directly speed up online systems. Previously the authors of this paper proposed a Dendrite Net (DD) with enormously lower time complexity than the existing nonlinear mapping algorithms; however, there still are redundant calculations in DD. This paper presents a DD with an acceleration module (AC) to accelerate nonlinear mapping further. We conduct three experiments to verify whether DD with AC has lower time complexity while retaining DD's nonlinear mapping properties and system identification properties: The first experiment is the precision and identification of unary nonlinear mapping, reflecting the calculation performance using DD with AC for basic functions in online systems. The second experiment is the mapping precision and identification of the multi-input nonlinear system, reflecting the performance for designing online systems via DD with AC. Finally, this paper compares the time complexity of DD and DD with AC and analyzes the theoretical reasons through repeated experiments. Results: DD with AC retains DD's excellent mapping and identification properties and has lower time complexity. Significance: DD with AC can be used for most engineering systems, such as sensor systems, and will speed up computation in these online systems. The code of DD with AC is available on https://github.com/liugang1234567/Gang-neuron
翻译:加速非线性绘图将直接加速在线系统。本文的作者们先前曾提议使用一个Dendrite Net(DD),其时间复杂性大大低于现有的非线性绘图算法;然而,DD中仍有重复的计算。本文展示了一种DDD, 其加速模块(AC),以进一步加速非线性绘图。我们进行了三次实验,以核实ACDD是否具有较低的时间复杂性,同时保留DDD的非线性绘图属性和系统识别特性:第一个实验是非线性非线性绘图的精确度和识别,反映与AC使用DDD计算在线系统基本功能的计算性能。第二个实验是多投入非线性系统的绘图精确度和识别,反映通过ACDD设计在线系统的性能。 最后,本文将DD和DDD123的复杂度与AC相比较,并通过反复试验分析理论原因。结果:DD与AC保持了DD的精度非线性非线性制图和识别非线性制图,反映了AC的精确性制图和识别能力,并且使用了ADDDDR的精度系统,并且使用了这些系统。