A Socio-inspired CALM Approach to Channel Assignment Performance Prediction and WMN Capacity Estimation
Srikant Manas Kala, Vanlin Sathya, M Pavan Kumar Reddy, Betty Lala,, Bheemarjuna Reddy Tamma

TL;DR
This paper introduces CALM, a sociologically inspired interference estimation algorithm for WMNs, and NETCAP, a heuristic model for capacity prediction, both demonstrating high accuracy and reliability through extensive simulations.
Contribution
It presents a novel sociologically inspired interference estimation method and a capacity prediction model, improving accuracy over existing metrics in WMNs.
Findings
CALM achieves over 90% accuracy in interference prediction.
NETCAP estimates network capacity with an average deviation of 6.4%.
CALM outperforms existing interference metrics in reliability.
Abstract
A significant amount of research literature is dedicated to interference mitigation in Wireless Mesh Networks (WMNs), with a special emphasis on designing channel allocation (CA) schemes which alleviate the impact of interference on WMN performance. But having countless CA schemes at one's disposal makes the task of choosing a suitable CA for a given WMN extremely tedious and time consuming. In this work, we propose a new interference estimation and CA performance prediction algorithm called CALM, which is inspired by social theory. We borrow the sociological idea of a "sui generis" social reality, and apply it to WMNs with significant success. To achieve this, we devise a novel Sociological Idea Borrowing Mechanism that facilitates easy operationalization of sociological concepts in other domains. Further, we formulate a heuristic Mixed Integer Programming (MIP) model called NETCAP…
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