Identifying the Effective Factors in the Change Management Model in the Automotive Industry Based on the General Policies of the Industry in the Fourth-Generation Industrial Revolution

Zahedi, Hamid, Matani, Mehrdad, Asadollah, Mehrara and Gholipoor Kanani, Yousef Identifying the Effective Factors in the Change Management Model in the Automotive Industry Based on the General Policies of the Industry in the Fourth-Generation Industrial Revolution. International Journal of Digital Content Management, 2022, vol. 3, n. 5. [Journal article (Unpaginated)]

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English abstract

Purpose: The main purpose of this study is to present a change management model in the automotive industry based on general industry policies in the fourth-generation industrial revolution. Method: To achieve this goal, first the effective factors and indicators affecting change management are identified based on the data model of the foundation and then these factors and indicators are categorized. Given that the purpose of this research is exploratory, the use of the grounded theory research method and semi-structured interviews with experts and professors led to the development of research model criteria. Findings: Based on the interviews and previous studies, the factors affecting the management of change in internal and external categories have been identified. Finally, change management strategies have been identified in three components: selecting acceptable managers, using consultants and expert staff, and creating a sense of empathy and trust. Conclusion: The use of expert managers and appropriate leaders causes change management to be implemented productively. Ultimately, these strategies result in increased survival under the components of greater brand acceptance and profitability. Change management strategies have been identified in three components: selecting acceptable managers, using consultants and expert staff, and creating a sense of empathy and trust. Changes are more about the individual's feelings than emotions and are technical, and associating them with change is the most difficult stage of change

Item type: Journal article (Unpaginated)
Keywords: Change Management Automotive Industry Fourth-Generation Industrial Revolution Smart Factory
Subjects: F. Management.
G. Industry, profession and education.
Depositing user: Mr Saeed Asgharzadeh
Date deposited: 07 Nov 2023 07:34
Last modified: 07 Nov 2023 07:34
URI: http://hdl.handle.net/10760/45052

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