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What is the importance of fuzzy modelling planning in research and developpement ? 


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Fuzzy modeling planning is important in research and development because it allows for the consideration of uncertainty and multiple factors in decision-making processes. Fuzzy modeling can be used in various areas such as marketing plan development , investment planning , production planning system optimization , and production capacity development . It provides a way to handle fuzzy or uncertain information and make trade-offs between conflicting goals. Fuzzy modeling allows for the grouping of customers based on their needs and preferences, which helps in determining demand and budget planning . It also helps in studying investment planning under uncertainty conditions and developing models that show the influence of different factors on investment decisions . In production planning, fuzzy goal programming models can optimize production and profit by considering various costs and constraints . Fuzzy modeling is also useful in dealing with the complexity of production planning and capacity development problems by considering multiple objectives and uncertainty .

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The provided paper does not specifically discuss the importance of fuzzy modeling planning in research and development.
The provided paper does not specifically mention the importance of fuzzy modeling planning in research and development.
Open accessJournal ArticleDOI
Desi Vinsensia, Yulia Utami 
01 Sep 2021
1 Citations
The provided paper does not specifically discuss the importance of fuzzy modeling planning in research and development.
The provided paper discusses the importance of fuzzy modeling in investment planning, but it does not specifically mention the importance of fuzzy modeling in research and development.
The provided paper does not mention research and development.

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