利用夏普利加法解释神经网络算法阐明微气泡结构行为

IF 2.6 3区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
QingXia Zhuo , LinFei Zhang , Lei Wang , QinKai Liu , Sen Zhang , Guanjun Wang , Chenyang Xue
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引用次数: 0

摘要

二氧化硅微谐振器(微气泡)被认为是极佳的候选器件,因为它可以在耳语画廊模式谐振器(WGMs)中实现超高品质因数,在狭小的空间中限制巨大的光功率。微气泡优化设计所面临的挑战是计算微气泡的独特性质,并通过了解其物理机制来增强其作为器件的能力。微气泡设计已经采用了机器学习(ML)策略。然而,由于模型缺乏对其预测的解释,这些方法通常被视为 "黑箱"。本研究介绍了一种前馈神经网络(FFNN)模型,可准确预测微气泡的光学特性。利用提供解释的分析工具 SHAP(Shapley Additive Explanations)方法,我们精确划分了微气泡几何参数对 FFNN 模型预测的影响,并指出了影响其光学特性的关键因素。通过逆向工程,我们可以从预期结果中推导出微气泡的几何参数,从而为这些结构的优化设计提供了一种方法。这项研究不仅为我们深入理解微气泡结构和性能优化提供了强有力的工具,还为光学和光子学领域的探索铺平了新的道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Elucidating microbubble structure behavior with a Shapley Additive Explanations neural network algorithm
Silica microresonators (microbubbles) are considered excellent candidates due to the realization of ultrahigh quality factors in whispering gallery mode resonators (WGMs), which can confine significant optical powers in small spaces. The challenge in the optimal design of microbubbles is to calculate their unique properties and enhance their capabilities as devices by understanding their physical mechanisms. Machine learning (ML) strategies have been employed for microbubble design. However, these approaches are often considered ‘black boxes’ due to the model’s lack of explanations for their predictions. This study introduces a feedforward neural network (FFNN) model that accurately forecasts the optical properties of microbubbles. Utilizing the SHAP (Shapley Additive Explanations) method, an analytical tool offering explanations, we delineate the precise impact of microbubble geometric parameters on the predictions of FFNN model and pinpoint the critical factors influencing their optical properties. By employing reverse engineering, we can deduce the geometric parameters of microbubbles from desired outcomes, thus providing an approach to the optimal design of these structures. This research not only equips us with a powerful instrument for a nuanced comprehension of microbubble structures and performance optimization but also paves new avenues for exploration in the realms of optics and photonics.
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来源期刊
Optical Fiber Technology
Optical Fiber Technology 工程技术-电信学
CiteScore
4.80
自引率
11.10%
发文量
327
审稿时长
63 days
期刊介绍: Innovations in optical fiber technology are revolutionizing world communications. Newly developed fiber amplifiers allow for direct transmission of high-speed signals over transcontinental distances without the need for electronic regeneration. Optical fibers find new applications in data processing. The impact of fiber materials, devices, and systems on communications in the coming decades will create an abundance of primary literature and the need for up-to-date reviews. Optical Fiber Technology: Materials, Devices, and Systems is a new cutting-edge journal designed to fill a need in this rapidly evolving field for speedy publication of regular length papers. Both theoretical and experimental papers on fiber materials, devices, and system performance evaluation and measurements are eligible, with emphasis on practical applications.
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