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Upgrade of the automatic analysis system in the TJ-II Thomson Scattering diagnostic: New image recognition classifier and fault condition detection

机译:TJ-II Thomson散射诊断中自动分析系统的升级:新型图像识别分类器和故障状态检测

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An automatic image classification system based on support vector machines (SVM) has been in operation for years in the TJ-II Thomson Scattering diagnostic. It recognizes five different types of images: CCD camera background, measurement of stray light without plasma or in a collapsed discharge, image during ECH phase, image during NBI phase and image after reaching the cut off density during ECH heating. Each kind of image implies the execution of different application software. Due to the fact that the recognition system is based on a learning system and major modifications have been carried out in both the diagnostic (optics) and TJ-II plasmas (injected power), the classifier model is no longer valid. A new SVM model has been developed with the current conditions. Also, specific error conditions in the data acquisition process can automatically be detected and managed now. The recovering process has been automated, thereby avoiding the loss of data in ensuing discharges.
机译:在TJ-II汤姆森散射诊断中,基于支持向量机(SVM)的自动图像分类系统已经运行了多年。它可以识别五种不同类型的图像:CCD相机背景,无等离子体或塌陷放电的杂散光测量,ECH阶段的图像,NBI阶段的图像以及ECH加热期间达到截止密度的图像。每种图像都意味着执行不同的应用程序软件。由于识别系统基于学习系统,并且已经在诊断(光学)和TJ-II等离子体(注入功率)中进行了重大修改,因此分类器模型不再有效。根据当前条件开发了新的SVM模型。此外,现在可以自动检测和管理数据采集过程中的特定错误情况。恢复过程已实现自动化,从而避免了后续放电过程中的数据丢失。

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