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Abdul Aabid

Researcher at Prince Sultan University

Publications -  82
Citations -  653

Abdul Aabid is an academic researcher from Prince Sultan University. The author has contributed to research in topics: Mach number & Nozzle. The author has an hindex of 10, co-authored 53 publications receiving 297 citations. Previous affiliations of Abdul Aabid include International Islamic University Malaysia.

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Response surface analysis, clustering, and random forest regression of pressure in suddenly expanded high-speed aerodynamic flows

TL;DR: In this article, the authors performed an experimental analysis of base pressure in suddenly expanded compressible flow from nozzles at different Mach numbers and found that microjets are efficient when the flow is under the influence of a favorable pressure gradient.
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A Review of Piezoelectric Material-Based Structural Control and Health Monitoring Techniques for Engineering Structures: Challenges and Opportunities

TL;DR: This review can serve as a guideline for the researchers who want to use piezoelectric materials for engineering structures and the new approaches and hypotheses suggested by different scholars are explored for control/repair methods and the structural health monitoring of engineering structures.
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A Systematic Review of Piezoelectric Materials and Energy Harvesters for Industrial Applications.

TL;DR: In this paper, a detailed study focused on the piezoelectric energy harvesters (PEHs) is reported, and a summary of previous studies based on PEHs other applications is listed, considering the technical aspects and methodologies.
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Experimental Investigation of the Friction Stir Weldability of AA8006 with Zirconia Particle Reinforcement and Optimized Process Parameters.

TL;DR: In this paper, the level of process parameters for the friction stir welding of AA8006 to reduce the variability by the trial-and-error experimental method, thereby reducing the number of samples needing to be characterized to optimize the process parameters.