Matches in SemOpenAlex for { <https://semopenalex.org/work/W3157241031> ?p ?o ?g. }
- W3157241031 endingPage "17056" @default.
- W3157241031 startingPage "17043" @default.
- W3157241031 abstract "The acquisition of massive data on parcel delivery motivates postal operators to foster the development of predictive systems to improve customer service. Predicting delivery times successive to being shipped out of the final depot, referred to as <italic xmlns:mml=http://www.w3.org/1998/Math/MathML xmlns:xlink=http://www.w3.org/1999/xlink>last-mile</i> prediction, deals with complicating factors such as traffic, drivers’ behaviors, and weather. This work studies the use of deep learning for solving a real-world case of last-mile parcel delivery time prediction. We present our solution under the Internet-of-Things (IoT) paradigm and discuss its feasibility on a cloud-based architecture as a smart city application. We focus on a large-scale parcel data set provided by Canada Post, covering the Greater Toronto Area (GTA). We utilize an origin-destination (OD) formulation, in which routes are not available, but only the start and end delivery points. We investigate three categories of convolutional-based neural networks and assess their performances on the task. We further demonstrate how our modeling outperforms several baselines, from classical machine learning models to referenced OD solutions. We perform a thorough error analysis across the data and visualize the deep features learned to better understand the model behavior, making interesting remarks on data predictability. Our work provides an end-to-end neural pipeline that leverages parcel OD data as well as weather to accurately predict delivery durations. We believe that our system has the potential not only to improve user experience by better modeling their anticipation but also to aid last-mile postal logistics as a whole." @default.
- W3157241031 created "2021-05-10" @default.
- W3157241031 creator A5005445075 @default.
- W3157241031 creator A5039812985 @default.
- W3157241031 date "2021-12-01" @default.
- W3157241031 modified "2023-10-05" @default.
- W3157241031 title "End-to-End Prediction of Parcel Delivery Time With Deep Learning for Smart-City Applications" @default.
- W3157241031 cites W1559632079 @default.
- W3157241031 cites W2026524503 @default.
- W3157241031 cites W2042493333 @default.
- W3157241031 cites W2058401212 @default.
- W3157241031 cites W2077963913 @default.
- W3157241031 cites W2084789233 @default.
- W3157241031 cites W2128728535 @default.
- W3157241031 cites W2134295053 @default.
- W3157241031 cites W2194775991 @default.
- W3157241031 cites W2200726908 @default.
- W3157241031 cites W2466233884 @default.
- W3157241031 cites W2579462724 @default.
- W3157241031 cites W2752782242 @default.
- W3157241031 cites W2809128166 @default.
- W3157241031 cites W2809623940 @default.
- W3157241031 cites W2888493720 @default.
- W3157241031 cites W2904628589 @default.
- W3157241031 cites W2911807131 @default.
- W3157241031 cites W2912325838 @default.
- W3157241031 cites W2921295433 @default.
- W3157241031 cites W2929932977 @default.
- W3157241031 cites W2935162632 @default.
- W3157241031 cites W2943055507 @default.
- W3157241031 cites W2952541788 @default.
- W3157241031 cites W2962834725 @default.
- W3157241031 cites W2964098640 @default.
- W3157241031 cites W2969238677 @default.
- W3157241031 cites W2971221568 @default.
- W3157241031 cites W2979419542 @default.
- W3157241031 cites W2980933977 @default.
- W3157241031 cites W2982467221 @default.
- W3157241031 cites W2994730203 @default.
- W3157241031 cites W2999798734 @default.
- W3157241031 cites W3005623150 @default.
- W3157241031 cites W3006560451 @default.
- W3157241031 cites W3007904524 @default.
- W3157241031 cites W3012523496 @default.
- W3157241031 cites W3015258472 @default.
- W3157241031 cites W3035949560 @default.
- W3157241031 cites W3095173472 @default.
- W3157241031 cites W3103370327 @default.
- W3157241031 cites W4255815195 @default.
- W3157241031 doi "https://doi.org/10.1109/jiot.2021.3077007" @default.
- W3157241031 hasPublicationYear "2021" @default.
- W3157241031 type Work @default.
- W3157241031 sameAs 3157241031 @default.
- W3157241031 citedByCount "11" @default.
- W3157241031 countsByYear W31572410312021 @default.
- W3157241031 countsByYear W31572410312022 @default.
- W3157241031 countsByYear W31572410312023 @default.
- W3157241031 crossrefType "journal-article" @default.
- W3157241031 hasAuthorship W3157241031A5005445075 @default.
- W3157241031 hasAuthorship W3157241031A5039812985 @default.
- W3157241031 hasBestOaLocation W31572410312 @default.
- W3157241031 hasConcept C108583219 @default.
- W3157241031 hasConcept C111919701 @default.
- W3157241031 hasConcept C119857082 @default.
- W3157241031 hasConcept C121332964 @default.
- W3157241031 hasConcept C124101348 @default.
- W3157241031 hasConcept C1276947 @default.
- W3157241031 hasConcept C154945302 @default.
- W3157241031 hasConcept C186379835 @default.
- W3157241031 hasConcept C197640229 @default.
- W3157241031 hasConcept C2522767166 @default.
- W3157241031 hasConcept C41008148 @default.
- W3157241031 hasConcept C45440154 @default.
- W3157241031 hasConcept C50644808 @default.
- W3157241031 hasConcept C62520636 @default.
- W3157241031 hasConcept C75684735 @default.
- W3157241031 hasConcept C79974875 @default.
- W3157241031 hasConcept C81363708 @default.
- W3157241031 hasConceptScore W3157241031C108583219 @default.
- W3157241031 hasConceptScore W3157241031C111919701 @default.
- W3157241031 hasConceptScore W3157241031C119857082 @default.
- W3157241031 hasConceptScore W3157241031C121332964 @default.
- W3157241031 hasConceptScore W3157241031C124101348 @default.
- W3157241031 hasConceptScore W3157241031C1276947 @default.
- W3157241031 hasConceptScore W3157241031C154945302 @default.
- W3157241031 hasConceptScore W3157241031C186379835 @default.
- W3157241031 hasConceptScore W3157241031C197640229 @default.
- W3157241031 hasConceptScore W3157241031C2522767166 @default.
- W3157241031 hasConceptScore W3157241031C41008148 @default.
- W3157241031 hasConceptScore W3157241031C45440154 @default.
- W3157241031 hasConceptScore W3157241031C50644808 @default.
- W3157241031 hasConceptScore W3157241031C62520636 @default.
- W3157241031 hasConceptScore W3157241031C75684735 @default.
- W3157241031 hasConceptScore W3157241031C79974875 @default.
- W3157241031 hasConceptScore W3157241031C81363708 @default.
- W3157241031 hasFunder F4320310942 @default.
- W3157241031 hasFunder F4320334593 @default.
- W3157241031 hasIssue "23" @default.