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Abstract

The main purpose of this article is to present facts related to the history of Port Praski located on the right bank of the Vistula river in Warsaw, which is currently being built. The subject of the consideration is the area and development of the former Port Praski, which project and the fi rst works began after the First World War. It’s spatial and functional connections with the downtown area and surroundings are also key issue. The article presents plans, concepts, projects and investments, furthermore theirs level of implementation. Signifi cant eff ort was made to answer the research questions concerning social expectations regarding the function and the direction of Port Praski development. In the final part of the article was made a comparison of existing revitalization works in Port Praski with HafenCity – the district of Hamburg, where the revitalization project has been already implemented for 20 years. However, comparative analysis revealed several signifi cant differences, allowed to conclude that Polish model of revitalization is only a partially identical with the approach applied in Western Europe.

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Authors and Affiliations

Krystyna Guranowska-Gruszecka
Monika Kordek
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Abstract

In manufacturing industries, the selection of machine parameters is a very complicated task in a time-bound manner. The process parameters play a primary role in confirming the quality, low cost of manufacturing, high productivity, and provide the source for sustainable machining. This paper explores the milling behavior of MWCNT/epoxy nanocomposites to attain the parametric conditions having lower surface roughness (Ra) and higher materials removal rate (MRR). Milling is considered as an indispensable process employed to acquire highly accurate and precise slots. Particle swarm optimization (PSO) is very trendy among the nature-stimulated metaheuristic method used for the optimization of varying constraints. This article uses the non-dominated PSO algorithm to optimize the milling parameters, namely, MWCNT weight% (Wt.), spindle speed (N), feed rate (F), and depth of cut (D). The first setting confirmatory test demonstrates the value of Ra and MRR that are found as 1:62 μm and 5.69 mm3/min, respectively and for the second set, the obtained values of Ra and MRR are 3.74 μm and 22.83 mm3/min respectively. The Pareto set allows the manufacturer to determine the optimal setting depending on their application need. The outcomes of the proposed algorithm offer new criteria to control the milling parameters for high efficiency.

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Authors and Affiliations

Prakhar Kumar Kharwar
1
Rajesh Kumar Verma
1
Nirmal Kumar Mandal
2
Arpan Kumar Mondal
2

  1. Department of Mechanical Engineering, Madan Mohan Malaviya University of Technology Gorakhpur, India.
  2. Department of Mechanical Engineering, National Institute of Technical Teachers’ Training and Research, Kolkata, India.

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