Efficient optical trapping force tuning for cusp-catastrophe autofocusing beams using deep neural networks

IF 3.5 2区 物理与天体物理 Q2 PHYSICS, APPLIED
Xiaofang Lu, Peiyu Zhang, Haixia Wu, Jiahao Yu, Ping Chen, Bingsuo Zou, Peilong Hong, Yu-Xuan Ren, Yi Liang
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引用次数: 0

Abstract

Structured light adjusts optical trapping forces through flexible structure design. However, it is challenging to evaluate optical forces on microscopic particles in structured light due to high computational hardware requirements, prolonged computation times, and data inefficiencies associated with solving optical trapping forces using generalized Lorenz–Mie theory. We propose the use of deep neural networks for predicting and tuning the optical trapping force of cusp-catastrophe autofocusing beams on Mie particles. Inputs include beam's structural parameters, laser power, and the size of captured particle, while the output is the optical trapping force. Following iterative training, the neural network achieved a mean square error of 1.5×10−5. Evaluation using 150 sets of test data revealed that 95.3% of the predictions had a relative error of less than 1.8%, indicating a high prediction accuracy. In contrast to traditional computational methods, the neural network model demonstrates a remarkable efficiency improvement—104 times faster in optimizing beams for optical trapping. This advancement demonstrates the advantage of deep learning neural networks for the application of structured light including autofocusing beams in optical tweezers.
利用深度神经网络对尖顶-灾难自动聚焦光束进行高效光学捕获力调整
结构光通过灵活的结构设计来调节光捕获力。然而,由于计算硬件要求高,计算时间长,以及使用广义洛伦兹-米氏理论求解光捕获力相关的数据效率低,因此在结构光中评估微观粒子上的光力具有挑战性。我们提出使用深度神经网络来预测和调整尖端突变自动聚焦光束对Mie粒子的光捕获力。输入包括光束的结构参数、激光功率和捕获粒子的大小,输出为光捕获力。经过迭代训练,神经网络的均方误差为1.5×10−5。使用150组测试数据进行评估,95.3%的预测相对误差小于1.8%,表明预测精度较高。与传统的计算方法相比,神经网络模型在优化光捕获光束方面的效率提高了104倍。这一进展证明了深度学习神经网络在结构光应用中的优势,包括光学镊子中的自动聚焦光束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied Physics Letters
Applied Physics Letters 物理-物理:应用
CiteScore
6.40
自引率
10.00%
发文量
1821
审稿时长
1.6 months
期刊介绍: Applied Physics Letters (APL) features concise, up-to-date reports on significant new findings in applied physics. Emphasizing rapid dissemination of key data and new physical insights, APL offers prompt publication of new experimental and theoretical papers reporting applications of physics phenomena to all branches of science, engineering, and modern technology. In addition to regular articles, the journal also publishes invited Fast Track, Perspectives, and in-depth Editorials which report on cutting-edge areas in applied physics. APL Perspectives are forward-looking invited letters which highlight recent developments or discoveries. Emphasis is placed on very recent developments, potentially disruptive technologies, open questions and possible solutions. They also include a mini-roadmap detailing where the community should direct efforts in order for the phenomena to be viable for application and the challenges associated with meeting that performance threshold. Perspectives are characterized by personal viewpoints and opinions of recognized experts in the field. Fast Track articles are invited original research articles that report results that are particularly novel and important or provide a significant advancement in an emerging field. Because of the urgency and scientific importance of the work, the peer review process is accelerated. If, during the review process, it becomes apparent that the paper does not meet the Fast Track criterion, it is returned to a normal track.
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