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Methods of Conditionally Optimal Forecasting for Stochastic Synergetic CALS Technologies

In: Time Series Analysis - New Insights

Author

Listed:
  • Igor N. Sinitsyn
  • Anatoly S. Shalamov

Abstract

Problems of optimal, sub- and conditionally optimal filtering and forecasting in product and staff subsystems at the background noise in synergistical organization-technical-economical systems (SOTES) are considered. Nowadays for highly available systems the problems of creation of basic systems engineering principles, approaches and information technologies (IT) for SOTES from modern spontaneous markets at the background inertially going world economics crisis, weakening global market relations at conditions of competition and counteraction reinforcement is very important. Big enterprises need IT due to essential local and systematic economic loss. It is necessary to form general approaches for stochastic processes and parameters estimation in SOTES at the background noises. The following notations are introduced: special observation SOTES (SOTES-O) with own organization-product resources and internal noise as information from special SOTES being enact noise (SOTES-N). Conception for SOTES structure for systems of technical, staff and financial support is developed. Linear, linear with parametric noises and nonlinear stochastic (discrete and hybrid) equations describing organization-production block (OPB) for three types of SOTES with their planning-economical estimating divisions are worked out. SOTES-O is described by two interconnected subsystems: state SOTES sensor and OPB supporting sensor with necessary resources. After short survey of modern modeling, sub- and conditionally optimal filtering and forecasting basic algorithms and IT for typical SOTES are given. Influence of OTES-N noise on rules and functional indexes of subsystems accompanying life cycle production, its filtration and forecasting is considered. Experimental software tools for modeling and forecasting of cost and technical readiness for parks of aircraft are developed.

Suggested Citation

  • Igor N. Sinitsyn & Anatoly S. Shalamov, 2023. "Methods of Conditionally Optimal Forecasting for Stochastic Synergetic CALS Technologies," Chapters, in: Rifaat Abdalla & Mohammed El-Diasty & Andrey Kostogryzov & Nikolay Andreevich Makhutov (ed.), Time Series Analysis - New Insights, IntechOpen.
  • Handle: RePEc:ito:pchaps:262560
    DOI: 10.5772/intechopen.103657
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    More about this item

    Keywords

    sub- and conditionally optimal filtering and forecasting (COF and COFc); continuous acquisition logic support (CALS); organizational-technical-economical systems (OTES); probability modeling; synergetical OTES (SOTES);
    All these keywords.

    JEL classification:

    • C10 - Mathematical and Quantitative Methods - - Econometric and Statistical Methods and Methodology: General - - - General

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