کاربست تکنیک فراترکیب در شناسایی مؤلفههای سیستمهای مدیریت هوشمند برای سیستمهای تولید پایدار و تابآور در صنعت سیمان
محورهای موضوعی : مدیریتاسحق جمال امیدی 1 , محمدعلی کرامتی 2 , مهدی رجبیون 3 , صفیه مهری نژاد 4
1 - دانشجوی دکتری، گروه مدیریت صنعتی، واحد تهران مرکزی، دانشگاه آزاد اسلامی، تهران، ایران.
2 - دانشیار، گروه مدیریت صنعتی، واحد تهران مرکزی، دانشگاه آزاد اسلامی، تهران، ایران.
3 - استادیار، گروه مدیریت بازرگانی، واحد تهران مرکزی، دانشگاه آزاد اسلامی، تهران، ایران.
4 - استادیار، گروه مدیریت مالی، واحد تهران مرکزی، دانشگاه آزاد اسلامی، تهران، ایران.
کلید واژه: سیستمهای مدیریت هوشمند, سیستمهای تولید پایدار و تابآور, صنعت سیمان.,
چکیده مقاله :
هدف این تحقیق، کاربست تکنیک فراترکیب در شناسایی مؤلفههای سیستمهای مدیریت هوشمند برای سیستمهای تولید پایدار و تابآور در صنعت سیمان است. محقق با بهکارگیری رویکرد مرور نظاممند و فراترکیب، به تحلیل نتایج و یافتههای محققین قبلی دستزده و با انجام گامهای 7 گانه روش ساندلوسکی و باروسو، به شناسایی عوامل مؤثر پرداخته است. از بین 268 مقاله، 32 مقاله بر اساس روش CASP انتخاب شد و روایی تحلیل با مقدار ضریب هولستی، ضریب پی اسکات، شاخص کاپای کوهن و آلفای کرپیندروف تأیید گردید. در این زمینه بهمنظور سنجش پایایی و کنترل کیفیت، از روش رونوشت استفاده گردید که مقدار آن برای شاخصهای شناساییشده در سطح توافق عالی شناسایی شد. نتایج حاصل از تحلیل دادههای گردآوری شده در نرمافزار MAXQDA منتج به شناسایی 75 کد اولیه در 12 مقوله مشخص شد. مقولههای شناسایی شده عبارتند از استراتژی انعطافپذیر، نوآوری تاب آورانه، همگرایی اینترنت اشیاء، هوش مصنوعی و پایگاه توزیع داده، هوشمندی تولید، طراحی، لجستیک دیجیتال تولید، مدیریت داده، فناوری تولید، مدیریت ارزش ذینفعان و افراد، تلفیق بیگ دیتا و بحران ابزار هوشمند سازی و دیجیتال و مدیریت ارتباط با مشتری هوشمند. در نتیجه، سیستمهای مدیریت هوشمند با تمرکز بر استراتژی انعطافپذیر، نوآوری تابآورانه، و همگرایی فناوریهای مدرن میتوانند بهطور قابل توجهی به افزایش تولید پایدار و تابآوری در صنعت سیمان کمک کنند. این سیستمها با ادغام فناوریهای اینترنت اشیاء، هوش مصنوعی و پایگاه توزیع داده، مانیتورینگ و بهینهسازی فرآیندها، کاهش هدررفت منابع و افزایش بهرهوری را ممکن میسازند.
The purpose of this research is to apply metasynthesis technique in identifying the components of intelligent management systems for sustainable and resilient production systems in the cement industry. Using a systematic and metasynthesis approach, the researcher analyzed the results and findings of previous researchers and identified the effective factors by performing the 7 steps of the Sandelovski and Barroso method. Among the 268 articles, 32 articles were selected based on the CASP method, and the validity of the analysis was confirmed by the values of the Holstein coefficient, Scott's P coefficient, Cohen's kappa index, and Krepinderoff's alpha. In this context, in order to measure reliability and quality control, the transcription method was used, and its value was identified for the indicators identified at the level of excellent agreement. The results of data analysis collected in MAXQDA software led to the identification of 75 primary codes in 12 categories. The identified categories are flexible strategy, resilient innovation, convergence of the Internet of Things, artificial intelligence and distributed database, manufacturing intelligence, design, manufacturing digital logistics, data management, manufacturing technology, stakeholder and people value management, big data integration, and tool crisis. Smart and digital and intelligent customer relationship management. As a result, intelligent management systems focusing on flexible strategy, resilient innovation, and convergence of modern technologies can significantly contribute to increasing sustainable production and resilience in the cement industry. By integrating the technologies of Internet of Things, artificial intelligence and database distribution, these systems enable process monitoring and optimization, reducing resource wastage and increasing productivity.
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