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A Big Data Platform for Surface Enhanced Raman Spectroscopy Data with an Application on Image-Based Sensor Quality Control

机译:具有基于图像的图像的传感器质量控制的表面增强拉曼光谱数据的大数据平台

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Surface-enhanced Raman spectroscopy (SERS) significantly enhances the Raman scattering by molecules, enabling detection and identification of small quantities of relevant bio-/chemical markers in a wide range of applications. In this paper, we present a big data platform with both a local client and cloud server built for acquiring, processing, visualizing and storing SERS sensor data. The local client controls the hardware (i.e., spectrometer and stage) to collect SERS spectra from HP designed sensors, and offers the options to analyze, visualize and save the spectra with meta-data records, including relevant experimental conditions. The cloud server contains remote databases and web interface for centralized data management to users from different locations. Here we describe how this platform was built and demonstrate its use for automated sensor quality control based on sensor images. Sensor quality control is a common practice, employed in sensor production to select high performing sensors. Image-based approach is a natural way to perform sensor quality control without destructing the sensors. Automating this process using the proposed platform can also reduce the time spent and achieve consistent result by avoiding human visual inspection.
机译:表面增强的拉曼光谱(SERS)显着增强了分子的拉曼散射,从而能够在各种应用中检测和鉴定少量相关的生物/化学标记。在本文中,我们提供了一个大数据平台,其中包含用于获取,处理,可视化和存储SERS传感器数据的本地客户端和云服务器。本地客户端控制硬件(即光谱仪和阶段)从HP设计的传感器中收集SERS光谱,并提供分析,可视化和将光谱与Meta-Data记录一起分析,包括相关实验条件。云服务器包含远程数据库和Web界面,用于集中数据管理到来自不同位置的用户。在这里,我们描述了如何构建该平台并证明基于传感器图像的自动传感器质量控制的用途。传感器质量控制是一种常见的做法,用于传感器生产,选择高性能传感器。基于图像的方法是在不破坏传感器的情况下执行传感器质量控制的自然方式。使用所提出的平台自动化该过程也可以通过避免人类的视觉检查来减少花费的时间并实现一致的结果。

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