DCLGMar 11, 2021

Drone-as-a-Service Composition Under Uncertainty

arXiv:2103.06513v131 citations
Originality Incremental advance
AI Analysis

This addresses drone-based delivery service optimization for logistics providers, but it appears incremental as it builds on existing service composition methods.

The paper tackles the problem of composing drone delivery services under uncertainty by proposing a three-component approach for scheduling, route-planning, and composition, with experiments showing effectiveness and efficiency.

We propose an uncertainty-aware service approach to provide drone-based delivery services called Drone-as-a-Service (DaaS) effectively. Specifically, we propose a service model of DaaS based on the dynamic spatiotemporal features of drones and their in-flight contexts. The proposed DaaS service approach consists of three components: scheduling, route-planning, and composition. First, we develop a DaaS scheduling model to generate DaaS itineraries through a Skyway network. Second, we propose an uncertainty-aware DaaS route-planning algorithm that selects the optimal Skyways under weather uncertainties. Third, we develop two DaaS composition techniques to select an optimal DaaS composition at each station of the planned route. A spatiotemporal DaaS composer first selects the optimal DaaSs based on their spatiotemporal availability and drone capabilities. A predictive DaaS composer then utilises the outcome of the first composer to enable fast and accurate DaaS composition using several Machine Learning classification methods. We train the classifiers using a new set of spatiotemporal features which are in addition to other DaaS QoS properties. Our experiments results show the effectiveness and efficiency of the proposed approach.

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