Đánh giá chủ quan về cảm giác khó chịu trong tư thế ngồi

Fuzzy Optimization and Decision Making - Tập 1 - Trang 287-312 - 2002
Michel Grabisch1, Jacques Duchêne2, Frédéric Lino3, Patrice Perny1
1LIP6, Université de Paris VI, Paris, France
2LM2S, Université de Technologie de Troyes, Troyes, France
3Laboratoire d'Accidentologie de Biomecanique et d'Étude du Comportement, Humain (LABECM), Nanterre, France

Tóm tắt

Chúng tôi nghiên cứu việc mô hình hóa cảm giác chủ quan về khó chịu đối với những người ngồi trong thời gian dài, theo các loại khó chịu cục bộ. Phương pháp nghiên cứu sử dụng các đo lường và tích phân mờ trong quá trình ra quyết định đa tiêu chí, cho phép mô hình hóa sự tương tác phức tạp giữa các biến. Kết quả của thí nghiệm được trình bày chi tiết, cung cấp các mô hình liên quan đến các loại khó chịu khác nhau và các vùng vĩ mô khác nhau của cơ thể.

Từ khóa

#cảm giác khó chịu #tư thế ngồi #ra quyết định đa tiêu chí #mô hình hóa #đo lường mờ

Tài liệu tham khảo

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