Advanced Data Analytics and Supervised Machine Learning in Optics Engineering Analysis

L. M. Choong, Wei Kuang
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Abstract

Advance data analytics and machine learning have affected almost every industry and area of scientific research, including engineering. Although limited literature of Machine Learning in optics engineering are found, Machine learning adoption has been valuable and garners a lot of interest in this field [1][2], and the rate of research in this area is growing rapidly [3]. In fiber optic transmission system, an optical transceiver is a core element, responsible for converting electrical signal to light pulses and vice versa. It comprises of housing, optoelectronic devices and PCBA, it has to undergo various characterization and tests at different stages of the manufacturing processes. Optical transceiver characterization is a very complex process with many sub-processes and parameters within those sub-processes which can lead to difficulties using traditional analytics approach. Usually, a tuning process only utilizes key parametric at the point of characterization, it may not be optimized taking considerations of other external factors e.g. product variants, components, testers, software used etc. Machine Learning shines when there are a lot of input parameters to be optimized [1]. This paper describes the application of machine learning techniques in the transmitter characterization algorithm of a high speed optical transceiver module to enhance the tuning algorithm and also improving throughput.
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光学工程分析中的高级数据分析和监督机器学习
先进的数据分析和机器学习几乎影响了每一个行业和科学研究领域,包括工程。尽管光学工程中机器学习的文献有限,但机器学习的应用已经很有价值,并在该领域引起了很大的兴趣[1][2],并且该领域的研究速度正在迅速增长[3]。在光纤传输系统中,光收发器是一个核心部件,负责将电信号转换成光脉冲。它由外壳,光电器件和PCBA组成,它必须在制造过程的不同阶段进行各种表征和测试。光模块特性是一个非常复杂的过程,有许多子过程和子过程中的参数,这可能导致使用传统分析方法的困难。通常,调优过程只利用表征点的关键参数,可能不会考虑其他外部因素(如产品变体、组件、测试人员、使用的软件等)进行优化。当有大量的输入参数需要优化时,机器学习就会大放异彩[1]。本文介绍了将机器学习技术应用于高速光收发模块的发送器表征算法中,以增强调谐算法并提高吞吐量。
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