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Sensorless Illumination Control of a Networked LED-Lighting System Using Feedforward Neural Network

机译:使用前馈神经网络的网络LED照明系统的无传感器照明控制

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摘要

In order to resolve the problem of energy hunger nowadays, saving lighting energy in buildings contributes an important part. In this paper, a sensorless illumination control scheme for smart networked LED lighting has been investigated. The scheme is based on a feedforward neural network to model all the nonlinear and linear relationships inside the lighting system as the controlled plant. Because the scheme does not rely on lighting simulation software, it is flexible to be implemented on microcontrollers. The scheme, moreover, can provide not only high accuracy in modeling but also global optimum in energy saving. Without using light sensors in its control loop, the approach can save significant cost and provide ease of installation as well. In addition, it also has the strength of fast response owing to feedforward control based on neural networks. The experimental results show that the approach can easily attain more than 95% modeling accuracy and also improve more than 28% energy saving with its optimal nonlinear multiple-input multiple-output control.
机译:为了解决当今的能源饥饿问题,节省建筑物中的照明能源起着重要的作用。本文研究了一种用于智能网络LED照明的无传感器照明控制方案。该方案基于前馈神经网络,对照明系统内部作为受控设备的所有非线性和线性关系进行建模。由于该方案不依赖照明仿真软件,因此可以灵活地在微控制器上实现。而且,该方案不仅可以提供建模的高精度,而且可以提供节能方面的全局最优。在其控制回路中不使用光传感器的情况下,该方法可以节省大量成本,并且还易于安装。此外,由于基于神经网络的前馈控制,它还具有快速响应的优势。实验结果表明,该方法具有最佳的非线性多输入多输出控制,可以轻松地达到95%以上的建模精度,并且还可以节省超过28%的能源。

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