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Data-driven prediction of microhardness and tensile strength in microwave-sintered ZrC reinforced AA7075/SiC hybrid composites using machine learning
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  • Published: 03 April 2026

Data-driven prediction of microhardness and tensile strength in microwave-sintered ZrC reinforced AA7075/SiC hybrid composites using machine learning

  • E Srinath1,
  • K Venkateswara Reddy1,
  • Guttikonda Manohar2,
  • Pramod Kumar P1 &
  • …
  • Nagaraj Ashok3 

Scientific Reports , Article number:  (2026) Cite this article

We are providing an unedited version of this manuscript to give early access to its findings. Before final publication, the manuscript will undergo further editing. Please note there may be errors present which affect the content, and all legal disclaimers apply.

Subjects

  • Engineering
  • Materials science

Abstract

The development of lightweight, high-strength materials is critical for next-generation aerospace and automotive applications. In this study, a comprehensive materials informatics framework is developed to predict the microhardness and tensile strength of microwave-sintered AA7075/SiC/ZrC hybrid composites. A structured experimental dataset comprising 172 samples was generated by systematically varying SiC and ZrC content, compaction pressure, sintering temperature, and sintering time, ensuring broad coverage of the processing space. Unlike conventional studies that rely solely on standalone machine learning implementations, the present work integrates advanced data visualization, rigorous model validation, and physically interpretable learning. Multiple regression algorithms—including Artificial Neural Networks (ANN), Extreme Gradient Boosting (XGBoost), Random Forest (RF), Support Vector Regression (SVR), and K-Nearest Neighbors (KNN)—were trained using optimized hyperparameters and evaluated through nested cross-validation to ensure robustness and generalizability. Among these, ANN and XGBoost demonstrated superior predictive performance, achieving coefficients of determination (R²) exceeding 0.97 for tensile strength and 0.95 for microhardness. A key novelty of this study lies in explicitly linking machine learning predictions with underlying metallurgical mechanisms. Feature importance analysis, supported by microstructural observations, reveals that tensile strength is predominantly governed by compaction pressure and reinforcement distribution, while microhardness is strongly influenced by SiC content and sintering parameters. These relationships are interpreted in terms of densification behavior, Orowan strengthening, and grain refinement mechanisms. By bridging experimental materials science with interpretable machine learning, this work provides a reliable and physically grounded predictive framework that reduces experimental effort and enables accelerated optimization of hybrid aluminium matrix composites.

Data availability

The experimental dataset generated and analyzed during this study is available from the corresponding author upon reasonable request. The present work forms the basis for further development of advanced physics-informed machine learning models. Upon completion of these extended studies, the dataset and corresponding model implementation will be curated and made publicly available through appropriate repositories to ensure transparency and reproducibility.

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Funding

The authors declare that no funds were received for this work.

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Authors and Affiliations

  1. School of Computer Science and Artificial Intelligence, SR University, Warangal, 506371, Telangana, India

    E Srinath, K Venkateswara Reddy & Pramod Kumar P

  2. Department of Mechanical Engineering, CVR College of Engineering, Vastunagar, Hyderabad, 501510, Telangana, India

    Guttikonda Manohar

  3. Faculty of Mechanical Engineering, Jimma Institute of Technology, Jimma University, Jimma, 378, Ethiopia

    Nagaraj Ashok

Authors
  1. E Srinath
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  2. K Venkateswara Reddy
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  3. Guttikonda Manohar
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  4. Pramod Kumar P
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Contributions

E. Srenath: Conceptualization, Methodology, Investigation, Data curation, Formal analysis, Software, Writing – original draft preparation.K. Venkateswara Reddy: Experimental design, Resources, Validation, Supervision.Guttikonda Manohar: Conceptualization, Methodology, Supervision, Writing – review & editing, Project administration.Pramod Kumar P: Experimental investigation, Materials preparation, Testing, Data acquisition.Nagaraj Ashok: Software implementation, Machine learning modeling, Visualization, Data interpretation.All authors reviewed the manuscript and approved the final version for submission.

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Correspondence to Nagaraj Ashok.

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Srinath, E., Venkateswara Reddy, K., Manohar, G. et al. Data-driven prediction of microhardness and tensile strength in microwave-sintered ZrC reinforced AA7075/SiC hybrid composites using machine learning. Sci Rep (2026). https://doi.org/10.1038/s41598-026-46609-4

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  • Received: 18 February 2026

  • Accepted: 26 March 2026

  • Published: 03 April 2026

  • DOI: https://doi.org/10.1038/s41598-026-46609-4

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Keywords

  • Machine learning
  • Composite materials
  • Predictive modelling
  • Neural networks
  • Random Forest
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