Purpose
– The purpose of this paper is to study how a general standardized processes assessment capability/maturity model, such as Capability Maturity Model Integration (CMMI), can be combined to a standardized benchmark of logistics processes best practices, such as FD X50-604, to propose a new approach that evaluates logistics processes capability/maturity.
Design/methodology/approach
– First, an analysis study of CMMI model and X50-604 standard is performed. In order to prove their coherence, a deep comparative analysis of CMMI and X50-604 practices is conducted. As illustration, the paper focuses on a particular application of this approach to evaluate capability/maturity of distribution logistics activities. An industrial case study that aims the validation of this particular application is finally conducted in a furniture company.
Findings
– The authors estimate that the paper findings provide an operational guide for industrials to evaluate their distribution processes that is a practical, verifiable, repeatable and extensible to other logistics process areas and an interesting opportunity to evolve the standard FD X50-604 regarding CMMI requirements to assess capability/maturity of logistics processes.
Originality/value
– In general, the few capability/maturity-driven models analyzed in literature present some limits that do not allow their diffusion in the industrial level, especially in logistics. This study proposes a new approach based on standards that provide an operational guide for industrials to evaluate their distribution processes based on capability/maturity concept.
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<p class="Default">The economic dispatch problem of power plays a very important role in the exploitation of electro-energy systems to judiciously distribute power generated by all plants. This paper proposes the use of Cuckoo Search Algorithm (CSA) for solving the economic and Emission dispatch. The effectiveness of the proposed approach has been tested on 3 generator system. CSA is a new meta-heuristic optimization method inspired from the obligate brood parasitism of some cuckoo species by laying their eggs in the nests of other host birds of other species.The results shows that performance of the proposed approach reveal the efficiently and robustness when compared results of other optimization algorithms reported in literature</p>
The economic dispatch problem of power plays a very important role in the exploitation of electro-energy systems to judiciously distribute power generated by all plants. This paper proposes use of Crow Search Algorithm (CSA), for solving the economic dispatch of two electricity networks: a testing system 6 units and the morocco network the crow search algorithm (CSA) is a recently developed metaheuristic search algorithm inspired by the intelligent behavior of crows..The results obtained by CSA are compared with various results obtained in the literature. Simulation results shows that using CSA can lead to finding stable and adequate power generated that can fulfill the need of both the civil and industrial areas.
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