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аналитика - Logistics - # Parcel Pickup Point Load Forecasting

Forecasting Parcel Pickup Point Load Using Markov Jump Process


Основные понятия
Predicting the load of Parcel Pickup Points is crucial for efficient management and customer satisfaction.
Аннотация
  • The growth of e-commerce has led to increased parcel deliveries, impacting transportation costs and pollution.
  • Alternatives like Parcel Pickup Points (PUPs) have emerged to reduce delivery failures due to absence.
  • Managing PUP networks involves balancing loads and avoiding overload situations.
  • A new approach using a Markov jump process is proposed for forecasting PUP load evolution.
  • The model considers parcel life cycles, activity variability, and carrier delays for accurate predictions.
  • Results show applicability to various parcel flows beyond B2C scenarios.
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Статистика
"The aim of this paper is to build estimators L (k + j|k) of the load L (k + j) at time k + j." "An MAE of 4.47 parcels is obtained for one-day ahead prediction." "For four-day ahead prediction, an MAE of 8.12 parcels was achieved."
Цитаты
"The proposed approach outperforms other models in predicting future PUP loads accurately."

Ключевые выводы из

by Thi-Thu-Tam ... в arxiv.org 03-25-2024

https://arxiv.org/pdf/2403.15189.pdf
Forecasting the load of Parcel Pickup Points using a Markov Jump Process

Дополнительные вопросы

How can the model account for unexpected events like holidays affecting parcel deliveries

Incorporating unexpected events like holidays into the load forecasting model can be achieved by adjusting the parameters or probabilities in the model to reflect these occurrences. For instance, if a holiday is known to impact parcel deliveries, historical data can be used to identify patterns and trends related to such events. By analyzing past holiday periods, the model can account for changes in delivery volumes, carrier availability, and customer behavior during those times. One approach could involve creating specific holiday factors that modify the transition probabilities between different states of parcels in the Markov jump process. These factors would adjust how parcels move through various stages based on the likelihood of delays or disruptions during holidays. By incorporating these adjustments into the model, it becomes more adaptable and responsive to unforeseen circumstances. Additionally, real-time data monitoring systems could provide updates on current conditions during holidays, allowing for dynamic adjustments to predictions as new information becomes available. This flexibility enables the model to react promptly to any deviations from expected patterns due to unexpected events like holidays.

What are the potential limitations or biases in using historical data for load forecasting

Using historical data for load forecasting may introduce several limitations and biases that need careful consideration: Seasonal Variations: Historical data might not capture long-term shifts in consumer behavior or market dynamics. Seasonal variations could lead to inaccuracies if significant changes occur over time. Outliers: Unusual events or anomalies present in historical data may skew forecasts if not properly identified and addressed. Data Quality: Inaccurate or incomplete historical records can result in biased predictions and unreliable insights. Assumptions: Forecasting models are built on assumptions derived from past trends which may not hold true under changing conditions. Overfitting: Models trained solely on historical data without considering external factors risk overfitting and producing overly optimistic results. To mitigate these limitations, it's essential to regularly validate models against new data sources, incorporate external variables that influence parcel flows (like weather conditions), employ robust outlier detection techniques, and continuously refine algorithms based on feedback loops from actual performance compared with forecasted values.

How might advancements in technology impact the accuracy and efficiency of load predictions in the future

Advancements in technology have a profound impact on enhancing accuracy and efficiency in load predictions for PUPs: Machine Learning Algorithms: Advanced ML algorithms such as deep learning models (e.g., LSTM) enable more complex pattern recognition leading to improved forecasting precision. Real-Time Data Integration: IoT sensors tracking parcel movements combined with AI-driven analytics offer up-to-the-minute insights for better decision-making. Predictive Analytics Platforms: Integrated platforms utilizing big data analytics allow for comprehensive analysis of multiple variables simultaneously resulting in more accurate forecasts. 4 .Automation & Robotics: Automated sorting systems powered by AI streamline parcel processing reducing bottlenecks thus optimizing operational efficiency 5 .Blockchain Technology: Implementing blockchain ensures secure transactions while providing transparent supply chain visibility aiding predictive modeling accuracy By leveraging these technological advancements alongside continuous refinement of algorithms using real-time feedback loops will significantly enhance both prediction accuracy and operational efficiency within PUP management companies going forward..
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