# Performance Analysis of Explainable Deep Learning-Based Intrusion Detection Systems for IoT Networks: A Systematic Review

**Authors:** Taiwo Blessing Ogunseyi, Gogulakrishan Thiyagarajan, Honggang He, Vinay Bist, Zhengcong Du

PMC · DOI: 10.3390/s26020363 · Sensors (Basel, Switzerland) · 2026-01-06

## TL;DR

This paper reviews how explainable AI impacts intrusion detection in IoT networks, highlighting trade-offs between accuracy, efficiency, and explainability.

## Contribution

The paper introduces a new XAI evaluation framework and a conceptual model for balancing detection performance, resource efficiency, and explanation quality in IoT IDSs.

## Key findings

- High detection accuracy in XAI-based IDSs often comes at the cost of reduced computational efficiency and weak explainability evaluation.
- Current approaches lack standardized post-deployment evaluation practices for explainability in IoT environments.
- The proposed UXIEF framework models the trilemma between detection performance, resource efficiency, and explanation quality.

## Abstract

The opaque nature of black-box deep learning (DL) models poses significant challenges for intrusion detection systems (IDSs) in Internet of Things (IoT) networks, where transparency, trust, and operational reliability are critical. Although explainable artificial intelligence (XAI) has been increasingly adopted to enhance interpretability, its impact on detection performance and computational efficiency in resource-constrained IoT environments remains insufficiently understood. This systematic review investigates the performance of an explainable deep learning-based IDS for IoT networks by analyzing trade-offs among detection accuracy, computational overhead, and explanation quality. Following the PRISMA methodology, 129 peer-reviewed studies published between 2018 and 2025 are systematically analyzed to address key research questions related to XAI technique trade-offs, deep learning architecture performance, post-deployment XAI evaluation practices, and deployment bottlenecks. The findings reveal a pronounced imbalance in existing approaches, where high detection accuracy is often achieved at the expense of computational efficiency and rigorous explainability evaluation, limiting practical deployment on IoT edge devices. To address these gaps, this review proposes two conceptual contributions: (i) an XAI evaluation framework that standardizes post-deployment evaluation categories for explainability, and (ii) the Unified Explainable IDS Evaluation Framework (UXIEF), which models the fundamental trilemma between detection performance, resource efficiency, and explanation quality in IoT IDSs. By systematically highlighting performance–efficiency gaps, methodological shortcomings, and practical deployment challenges, this review provides a structured foundation and actionable insights for the development of trustworthy, efficient, and deployable explainable IDS solutions in IoT ecosystems.

## Full text

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## Figures

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## References

132 references — full list in the complete paper: https://tomesphere.com/paper/PMC12845731/full.md

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Source: https://tomesphere.com/paper/PMC12845731