In the recent era, multi-criteria decision making under uncertainty is gaining importance due to its wide range of applicability. Among several types of uncertainty handling techniques, Robust Optimization (RO) is considered as an efficient and tractable approach provided one has accessibility to data in uncertain regions. However, solutions of RO may actually deviate from actual results in real scenarios, due to conservative sampling. This paper proposes a methodology to amalgamate unsupervised machine learning algorithms with RO which thereby makes it data-driven. A novel evolutionary fuzzy clustering mechanism is implemented to transcript the uncertain space such that the exact regions of uncertainty are identified. Subsequently, density...
Uncertainty analysis of an industrial grinding optimization process involving various sources of unc...
The field of robust optimization deals with problems where uncertainty influences the optimal decisi...
Gaussian processes are the most popular model used in surrogate-assisted evolutionary optimization o...
Performing multi-objective optimization under uncertainty is a common requirement in industries and ...
Multi-criteria decision making under uncertainty is a common practice followed in industries and aca...
Robust optimization for planning of supply chains under uncertainty is regarded as an efficient and ...
While addressing supply chain planning under uncertainty, Robust Optimization (RO) is regarded as an...
The process of steel casting involves several energy-intensive tasks such as heat transfer, solidifi...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
Uncertain process parameters present in industrial grinding circuits (IGC) increase the difficulty i...
In optimization, certain numbers of objectives are optimized such that all other given constraints a...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
In offline data-driven multiobjective optimization, no new data is available during the optimization...
In this paper, we present an Inverse Multi-Objective Robust Evolutionary (IMORE) design methodology ...
Uncertainty analysis of an industrial grinding optimization process involving various sources of unc...
The field of robust optimization deals with problems where uncertainty influences the optimal decisi...
Gaussian processes are the most popular model used in surrogate-assisted evolutionary optimization o...
Performing multi-objective optimization under uncertainty is a common requirement in industries and ...
Multi-criteria decision making under uncertainty is a common practice followed in industries and aca...
Robust optimization for planning of supply chains under uncertainty is regarded as an efficient and ...
While addressing supply chain planning under uncertainty, Robust Optimization (RO) is regarded as an...
The process of steel casting involves several energy-intensive tasks such as heat transfer, solidifi...
Abstract. Our goal is to build robust optimization problems for making decisions based on complex da...
We propose a general framework for machine learning based optimization under uncertainty. Our approa...
Uncertain process parameters present in industrial grinding circuits (IGC) increase the difficulty i...
In optimization, certain numbers of objectives are optimized such that all other given constraints a...
We propose a novel approach for optimization under uncertainty. Our approach does not assume any par...
In offline data-driven multiobjective optimization, no new data is available during the optimization...
In this paper, we present an Inverse Multi-Objective Robust Evolutionary (IMORE) design methodology ...
Uncertainty analysis of an industrial grinding optimization process involving various sources of unc...
The field of robust optimization deals with problems where uncertainty influences the optimal decisi...
Gaussian processes are the most popular model used in surrogate-assisted evolutionary optimization o...