ZHU Zhe-jun~, SUN Ji-ping~. Characteristics of Informatization Management of Coal Enterprise[J]. Journal of Mine Automation, 2010, 36(7): 33-35.
Citation: ZHU Zhe-jun~, SUN Ji-ping~. Characteristics of Informatization Management of Coal Enterprise[J]. Journal of Mine Automation, 2010, 36(7): 33-35.

Characteristics of Informatization Management of Coal Enterprise

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Supported by Doctoral Program Foundation of Ministry of Education of China(200802900008,20090023110008)

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  • The paper firstly introduced characteristics of informatization management of coal enterprise as follows.(1) Resource development touchs upon many aspects.(2) Management of safety production is essential.(3) Production and product of coal is decided by geological condition of coal storage.((4) Management) and maintenance of facilities should be highlighted.(5) Stocking facilities and materials are not included in final products.(6) A great deal of facilities are centralized purchased.(7) Coal sale is related to transition.(8) Coal production influences environment.(9) Production design is more important than product design.Then it analyzed the characteristics of informatization management of coal enterprise form the views of informatization management of production,transition,and sales.The paper could guide the study,design,and realization of informatization system of coal enterprise.
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