2021
DOI: 10.3390/su13094911
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Research on the Chaotic Characteristics and Noise Reduction Prediction of Information System Anomalies in Equipment Manufacturing Enterprises

Abstract: As the process of informatization progresses in an equipment manufacturing enterprise, its information system becomes a dissipative structure due to the nonlinear interaction of many factors. The objectives of this study were to help enterprises adopt intelligent manufacturing, realize sustainable development strategies, and understand the operation rules of information systems. For this purpose, this study analyzed an anomaly index time series of an information system in the process of integration. First, the… Show more

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Cited by 4 publications
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“…Thus, long-term reliable creditworthiness models and financial analysis models [1,2] or regression of economic variables using factor analysis [3,4] or data envelopment analysis [5,6] are often replaced by financial management models less sensitive to the non-stationarity of the development of controlled variables. These are control proposals using state learning and neural networks of artificial intelligence [5,6] and/or control systems of nonlinear systems using the description of symptomatic balance defined by A. Lyapunov [7,8]. Furthermore, approaches to the statistical regulation of flow quantities from the theory of W.A.…”
Section: Introductionmentioning
confidence: 99%
“…Thus, long-term reliable creditworthiness models and financial analysis models [1,2] or regression of economic variables using factor analysis [3,4] or data envelopment analysis [5,6] are often replaced by financial management models less sensitive to the non-stationarity of the development of controlled variables. These are control proposals using state learning and neural networks of artificial intelligence [5,6] and/or control systems of nonlinear systems using the description of symptomatic balance defined by A. Lyapunov [7,8]. Furthermore, approaches to the statistical regulation of flow quantities from the theory of W.A.…”
Section: Introductionmentioning
confidence: 99%