Intelligent Instrumentation.

Alice M Harper, Shirley A Liebman
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引用次数: 27

Abstract

Feasibility studies on the application of multivariate statistical and mathematical algorithms to chemical problems have proliferated over the past 15 years. In contrast to this, most commercially available computerized analytical instruments have used in the data systems only those algorithms which acquire, display, or massage raw data. These techniques would fall into the "preprocessing stage" of sophisticated data analysis studies. An exception to this is, of course, are the efforts of instrumental manufacturers in the area of spectral library search. Recent firsthand experiences with several groups designing instruments and analytical procedures for which rudimentary statistical techniques were inadequate have focused efforts on the question of multivariate data systems for instrumentation. That a sophisticated and versatile mathematical data system must also be intelligent (not just a number cruncher) is an overriding consideration in our current development. For example, consider a system set up to perform pattern recognition. Either all users need to understand the interaction of data structures with algorithm type and assumptions or the data system must possess such an understanding. It would seem, in such cases, that the algorithm driver should include an expert systems specifically geared to mimic a chemometrician as well as one to aid interpretation in terms of the chemistry of a result. Three areas of modem analysts will be discussed: 1) developments in the area of preprocessing and pattern recognition systems for pyrolysis gas chromatography and pyrolysis mass spectrometry; 2) methods projected for the cross interpretation of several analysis techniques such as several spectroscopies on single samples; and 3) the advantages of having well defined chemical problems for expert systems/pattern recognition automation.

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智能仪表。
在过去15年中,关于将多元统计和数学算法应用于化学问题的可行性研究激增。与此相反,大多数商业上可用的计算机化分析仪器在数据系统中只使用那些获取、显示或处理原始数据的算法。这些技术将落入复杂数据分析研究的“预处理阶段”。当然,仪器制造商在光谱库搜索领域的努力是一个例外。最近有几个设计仪器和分析程序的小组的第一手经验表明,基本的统计技术不足以解决这些问题,因此集中精力研究仪器的多变量数据系统问题。一个复杂和通用的数学数据系统也必须是智能的(而不仅仅是一个数字处理器),这是我们当前发展的首要考虑因素。例如,考虑一个用于执行模式识别的系统。要么所有用户都需要理解数据结构与算法类型和假设之间的相互作用,要么数据系统必须具备这样的理解。在这种情况下,算法驱动程序似乎应该包括一个专门模仿化学计量学家的专家系统,以及一个根据结果的化学性质来帮助解释的专家系统。现代分析的三个领域将被讨论:1)热解气相色谱和热解质谱的预处理和模式识别系统领域的发展;2)预测几种分析技术交叉解释的方法,如对单个样品的几种光谱;3)为专家系统/模式识别自动化提供明确定义的化学问题的优势。
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