International Scientific Journal

Thermal Science - Online First

Authors of this Paper

External Links

online first only

Research on management strategy of coordination behavior of task conflicts in in-service thermal power unit operation based on big data modeling

With the development of the Internet and information technology, the in-service thermal power unit is facing more challenges, and the innovation of the operation and management mode of the in-service thermal power unit is urgent and necessary. From the perspective of work conflict, this paper constructs a multi-objective genetic algorithm, which introduces big data modeling technology into the management innovation of in-service thermal power units. The algorithm solves the relationship between various operating entities in active thermal power units through functions. In order to get the optimal solution for vehicle distribution. Firstly, the contingency theory is introduced into the innovative design scheme of the in-service thermal power unit information system to optimize the management decision-making distribution path in the big data environment, design the multi-objective genetic algorithm steps, construct the non-dominated set, and combine the target cross-variation operations. The genetic sub-categories are jointly derived, and then the relationship between the parties in the management and decision-making innovation management activities of the in-service thermal power units is solved. The experimental results show that the shortest running time of the algorithm during the experimental operation is 0.56 seconds, and the longest running time is 2.48 seconds. The average running time in the whole process is less than 1 second, which meets the actual demand. The genetic algorithm can help the in-service thermal power unit. Reasonable arrangements for managing the delivery route of the decision-making fleet. The research in this paper has implications for the management innovation of in-service thermal power units in the information environment, and further expands the application field of big data modeling, which has practical significance.
PAPER REVISED: 2019-02-05
PAPER ACCEPTED: 2019-02-15
  1. Chen C J, Lin B W, Lin Y H, et al. Ownership structure, independent board members and innovation performance: A contingency perspective ☆
  2. Shao Z, Feng Y, Hu Q. Effectiveness of top management support in enterprise systems success: a contingency perspective of fit between leadership style and system life cycle
  3. Caputo A, Marzi G, Pellegrini M M. The Internet of Things in manufacturing innovation processes: Development and application of a conceptual framework
  4. Lopez Valeiras E, Gonzalez Sanchez M B, Gomez Conde J. The effects of the interactive use of management control systems on process and organizational innovation
  5. Basl J. Enterprise Information Systems and Technologies in Czech Companies from the Perspective of Trends in Industry 4.0
  6. Fried A. Terminological distinctions of ‘control': a review of the implications for management control research in the context of innovation
  7. To C K M. A Quad Model for Assessing Innovation Potential: Toward a Theory of Innovation Orchestration Quality