Resilient IOT Ecosystems through Predictive Maintenance and AI Security Layers

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Abstract

The increasing use of IoT devices in different industries means that the resulting ecosystems must bereliable and capable of quickly recovering from cyber threats. This study addresses IoT reliability and incorporatescommunication with predictive maintenance and AI security layers. The framework uses predictive analytical tools,which means the framework predicts device breakdowns and security threats so that measures can be taken in advance.At the same time, AI in security uses a range of machine learning algorithms for progressive threat tracking andadaptive patching to offer perpetual security against innovative threats.Determined results present insights into how AI improves vulnerability detection, minimizing exposure to attacks.Further, accurate dynamic patch management carried out by AI does not cause frequent operational interruptions; italso manages the integration of security patching without input from an individual. It enhances IoT safety and improvesdevice efficiency via preventive maintenance approaches.This integrated approach presents many advantages in various fields, including healthcare, manufacturing, energy, andsmart cities. Better protection of IoT systems guarantees business and administrative availability and protection ofcrucial infrastructures and data. Moreover, the framework is an enabler of future IoT security reference architecturesand structures. It provides the basis for the self-protective and self-aware defense mechanisms necessary for sustainablenew IoT systems.

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