Amit Rauniyar

South Asian University

Papers

4

Total Citations

74

H-Index

4

About

Amit Rauniyar’s research lies at the intersection of multi-robot systems, task allocation, and evolutionary computation, where he tackles the fundamental challenge of enabling robots to cooperate efficiently. His most influential work focuses on the Multi-Robot Coalition Formation (MRCF) problem—the process of forming optimal robot subsets to execute complex tasks. Rauniyar pioneered the use of immigrant-based adaptive genetic algorithms to solve this problem, introducing dynamic strategies that prevent premature convergence and adapt to changing task environments. His 2016 paper on this approach has garnered 34 citations, while a follow-up study in 2017, which refined task allocation in multi-robot systems, has accumulated 31 citations. These contributions are critical for real-world applications like search-and-rescue and warehouse automation, where robots must form coalitions on the fly. Rauniyar has also explored zone-based path planning for mobile robots, extending his algorithmic toolkit. With over 70 total citations, his work is recognized for bridging theoretical optimization with practical robotics, offering scalable solutions for coordination in dynamic, resource-constrained environments.

Research Focus

Key Achievements

4
H-Index
4
Papers
74
Total Citations
19
Avg Citations/Paper
🏆 Most Cited Paper
Multi-robot coalition formation problem: Task allocation with adaptive immigrants based genetic algorithms
34 citations · 2016
📈 Most Prolific Year: 2020 (2 Papers)
🤝 Key Collaborators: 3
🏛 Institutions: South Asian University

Top Papers

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Key Collaborators

Contact & Links

Available for collaboration
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