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Identification of spectral lines of elements using artificial neural networks

机译:使用人工神经网络识别元素的光谱线

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Artificial neural networks (ANNs) are relatively new computational tools that have found extensive utilization in solving many complex real-world problems. This paper describes how an ANN can be used to identify the spectral lines of elements. The spectral lines of Cadmium (Cd), Calcium (Ca), Iron (Fe), Lithium (Li), Mercury (Hg), Potassium (K) and Strontium (Sr) in the visible range are chosen for the investigation. One of the unique features of this technique is that it uses the whole spectrum in the visible range instead of individual spectral lines. The spectrum of a sample taken with a spectrometer contains both original peaks and spurious peaks. It is a tedious task to identify these peaks to determine the elements present in the sample. ANNs capability of retrieving original data from noisy spectrum is also explored in this paper. The importance of the need of sufficient data for training ANNs to get accurate results is also emphasized. Two networks are examined: one trained in all spectral lines and other with the persistent lines only. The network trained in all spectral lines is found to be superior in analyzing the spectrum even in a noisy environment.
机译:人工神经网络(ANN)是相对较新的计算工具,已在解决许多复杂的现实世界问题中得到广泛利用。本文介绍了如何使用ANN来识别元素的光谱线。选择可见范围内的镉(Cd),钙(Ca),铁(Fe),锂(Li),汞(Hg),钾(K)和锶(Sr)的谱线进行研究。该技术的独特功能之一是它使用可见范围内的整个光谱而不是单个光谱线。用光谱仪采集的样品的光谱既包含原始峰,也包含杂散峰。识别这些峰以确定样品中存在的元素是一项繁琐的任务。本文还探讨了人工神经网络从噪声频谱中检索原始数据的能力。还强调了需要足够的数据来训练ANN以获取准确结果的重要性。检查了两个网络:一个在所有光谱线中训练,另一个在持久线中训练。发现即使在嘈杂的环境中,在所有光谱线中训练的网络在分析光谱方面也是优越的。

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