Designing the Service Network for Fleet Automation
نام ساير پديدآوران
Mahmassani, Hani
وضعیت نشر و پخش و غیره
نام ناشر، پخش کننده و غيره
Northwestern University
تاریخ نشرو بخش و غیره
2020
مشخصات ظاهری
نام خاص و کميت اثر
160
یادداشتهای مربوط به پایان نامه ها
جزئيات پايان نامه و نوع درجه آن
Ph.D.
کسي که مدرک را اعطا کرده
Northwestern University
امتياز متن
2020
یادداشتهای مربوط به خلاصه یا چکیده
متن يادداشت
Autonomous trucks (ATs) are envisioned to potentially revolutionize the logistics sector. The integration of autonomous trucks into the overall truck fleet will impact industry regulations and ease driver-related challenges. It also has the potential to improve road safety and reduce carrier costs. There is an extensive body of literature on long-haul consolidated freight service network design (SND) with manual-driven trucks. However, there is limited literature that studies network design with automation and none comparing different levels of automation. This thesis develops and tests formulations and solution methods for freight service network design that account for different formats of autonomous truck deployment. The goal is to help service providers manage fleet operations and to present insights to guide policy makers in preparing for autonomous truck deployment. To meet these objectives, the thesis first revisits the taxonomy of the freight planning problem, identifies changes needed to existing categories, and suggests additional modeling challenges that should be examined at each level of autonomous truck deployment. Next, the thesis examines the impact of driver work rules and regulations on network planning. The results show that the driver return to domicile requirement has a more significant contribution to cost than the hour of service regulations. Under the current fully manual fleet situation, the driver cost is the main determinant of routing choice compared to the other cost components (vehicle, fuel and handling costs). The thesis develops and tests modified service network design formulations that account for five levels of truck automation: (1) manual operations (base case), (2) mixed fleet with drivers on board each AT, (3) mixed fleet with two types of ATs (with and without a driver on board), (4) mixed fleet without a driver on-board AT, and (5) fully autonomous fleet. The computational experiments show that the cost savings with AT deployment result from partial or complete elimination of driver costs, reduction in empty miles traveled and the decrease in the number of trucks required to service the loads. Deployment of ATs is preferred over the long-haul direct trips connecting terminals. AT deployment even when restricted to specific geographic zones has operational benefits and environmental advantages driven by the reduction in costs and decrease in unproductive miles driven. The results show that the network routing may not exhibit significant change with AT deployment. This is beneficial for carriers as that would mean their current terminal locations and capacity may not be impacted and may not have to be adjusted (relocation, increase capacity) with deployment, assuming the demand patterns remain unchanged. Finally, the thesis examines daily load planning in LTL operations for the five deployment scenarios defined in Chapter 5. Given daily updates of load information, the paths for the five deployment scenarios were adjusted using two daily updating methods. Both methods start with a base plan in which paths are generated based on the historic daily distribution of load dispatches during an average week .The two methods are: (1) Option 1: re-optimization of pre-booked loads and new requests, and (2) Option 2: optimization of new requests only. The solutions of the two options are compared to the hindsight plan which assumes complete information of actual requests placed. The results show that the cost savings achieved with re-optimization compared to insertion increase with more demand variability; this outcome is consistent across all fleet mixes. The percentage of empty miles driven with re-optimization is close to the "Hindsight" plan.
موضوع (اسم عام یاعبارت اسمی عام)
موضوع مستند نشده
Engineering
موضوع مستند نشده
Operations research
موضوع مستند نشده
Transportation
نام شخص به منزله سر شناسه - (مسئولیت معنوی درجه اول )