One of the most important elements of the performance in planning, at the field of planning engineering, is to identify the resources and then distribute the resources on activities, and before establishing the time schedule for activities. The planning in project management, was not merely limited to the making schedule for the range of activities, or the development of the relations for those activities through Microsoft or Primavera (P6), so it can be through two identical projects for the same logical sequence of the activities network to both of them and have the same start time with identical activities and both in same location. But both the ends of the actual time will be different to both of them. The reason for this is back to the difference at the quality of the planning performance between each of the two projects. Accordingly, that paper designed a model to estimate the perform of tools from field data using conclusion fuzzy system to determine the impact of higher produce between this supply in light of the location and conditions of work.
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