论文标题
带有加速模块的树突网,用于更快的非线性映射和系统标识
Dendrite Net with Acceleration Module for Faster Nonlinear Mapping and System Identification
论文作者
论文摘要
非线性映射是在线系统(例如传感器系统和手机)中的必要且普遍的需求。加速非线性映射将直接加快在线系统。以前,本文的作者提出了比现有的非线性映射算法的时间复杂度较低的树突网(DD)。但是,DD中仍有冗余计算。本文为DD提供了加速模块(AC),以进一步加速非线性映射。我们进行了三个实验,以验证AC的DD是否具有较低的时间复杂性,同时保留DD的非线性映射属性和系统识别属性: 第一个实验是对单位非线性映射的精确和识别,反映了使用与AC一起使用AC的DD计算性能,以实现在线系统中的基本功能。 第二个实验是多输入非线性系统的映射精度和识别,反映了使用AC设计在线系统的性能。 最后,本文比较了DD和DD与AC的时间复杂性,并通过重复实验分析了理论原因。结果:具有AC的DD保留DD的出色映射和识别属性,并且具有较低的时间复杂性。意义:带有AC的DD可用于大多数工程系统,例如传感器系统,并将加快这些在线系统中的计算。可在https://github.com/liugang1234567/gang-neuron上找到带有AC的DD代码
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