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Neural network based human reliability analysis method in production systems

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  • Rasoul Jamshidi
  • Mohammad Ebrahim Sadeghi

Abstract

Purpose: In addition to playing an important role in creating economic security and investment development, insurance companies also invest. The country's insurance industry as one of the country's financial institutions has a special place in the investment process and special attention to appropriate investment policies in the field of insurance industry is essential. So that the efficiency of this industry in allocating the existing budget stimulates other economic sectors. This study seeks to model investment in the performance of dynamic networks of insurance companies. Methodology: In this paper, a new investment model is designed to examine the dynamic network performance of insurance companies in Iran. The designed model is implemented using GAMS software and the outputs of the model are analyzed based on regression method. The required information has been collected based on the statistics of insurance companies in Iran between 1393 and 1398. Findings: After evaluating these units, out of 15 companies evaluated, 6 companies had unit performance and were introduced as efficient companies. The average efficiency of insurance companies is 0.78 and the standard deviation is 0.2. The results show that the increase in the value of investments is due to the large reduction in costs and in terms of capital and net profit of companies is a large number that has a clear and strong potential for insurance companies. Originality/Value: In this paper, investment modeling is performed to examine the performance of dynamic networks of insurance companies in Iran.

Suggested Citation

  • Rasoul Jamshidi & Mohammad Ebrahim Sadeghi, 2022. "Neural network based human reliability analysis method in production systems," Papers 2206.11850, arXiv.org.
  • Handle: RePEc:arx:papers:2206.11850
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    File URL: http://arxiv.org/pdf/2206.11850
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