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    - View as Text Multiobjective optimization problems can be found in various fields: product and process design, finance, aircraft design, the oil and gas industry,. We introduce some concepts of generalized invexity for the continuous-time multiobjective programming problems, namely, the concepts of It was apparent that the multi-member approach

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