Nội dung được dịch bởi AI, chỉ mang tính chất tham khảo
Công nghệ số làm thế nào để cải thiện khả năng phục hồi của chuỗi cung ứng trong bối cảnh đại dịch COVID-19? Bằng chứng từ các công ty sản xuất Trung Quốc
Tóm tắt
Các công nghệ số (DTs) có thể hỗ trợ các doanh nghiệp ứng phó với những gián đoạn trong chuỗi cung ứng (SC) do sự biến động như đại dịch gây ra. Tuy nhiên, kiến thức hiện tại về mối quan hệ giữa DTs và khả năng phục hồi chuỗi cung ứng (SCR) là không đủ. Nghiên cứu này dựa trên lý thuyết xử lý thông tin để phát triển một mô hình trung gian nối tiếp nhằm giải quyết sự thiếu hụt này. Chúng tôi phân tích một tập mẫu bao gồm 264 nhà sản xuất Trung Quốc. Kết quả thực nghiệm tiết lộ rằng các nền tảng chuỗi cung ứng số (DSCPs), cũng như khả năng truy xuất nguồn gốc chuỗi cung ứng (SCT) và tính linh hoạt của chuỗi cung ứng (SCA), hoàn toàn trung gian hóa mối quan hệ tích cực giữa DTs và SCR. Cụ thể, bốn con đường gián tiếp quan trọng chỉ ra rằng các công ty chỉ có thể cải thiện SCR nếu họ sử dụng DTs để cải thiện trực tiếp hoặc gián tiếp SCT và SCA (thông qua DSCPs). Nghiên cứu của chúng tôi góp phần vào tài liệu về khả năng phục hồi bằng cách xem xét cơ chế trung gian có thể có mà qua đó DTs ảnh hưởng đến SCR. Các phát hiện cũng cung cấp những hiểu biết cần thiết cho các công ty để điều chỉnh chiến lược số của họ và phát triển trong một môi trường đầy biến động.
Từ khóa
#công nghệ số #chuỗi cung ứng #khả năng phục hồi #nền tảng chuỗi cung ứng số #khả năng truy xuất nguồn gốc #tính linh hoạt của chuỗi cung ứng #ứng phó với đại dịchTài liệu tham khảo
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