Discover How Data Collection Worked for Blacksburg Transit
公司规模
Large Corporate
地区
- America
国家
- United States
产品
- TripSpark Fixed Route Transportation Software
- CAD/AVL System
技术栈
- Computer Aided Dispatch (CAD)
- Automatic Vehicle Location (AVL)
实施规模
- Enterprise-wide Deployment
影响指标
- Productivity Improvements
- Cost Savings
- Customer Satisfaction
技术
- 功能应用 - 远程监控系统
- 分析与建模 - 实时分析
适用行业
- 运输
- 城市与自治市
适用功能
- 物流运输
- 商业运营
用例
- 车队管理
- 实时定位系统 (RTLS)
- 预测性维护
服务
- 系统集成
- 软件设计与工程服务
关于客户
Blacksburg Transit is a local government-owned, urban/suburban bus line. Centered in Blacksburg, Virginia, they are proud to provide safe, courteous, reliable, accessible and affordable public transportation to a variety of communities. Over the years it has grown from a six-bus operation (in 1983) to the contemporary version we see today, comprised of 50 buses and 11 vans. They deal in both fixed route transit operation as well as offering student shuttle and DR paratransit services. But the main focus of their agency is in transporting large amounts of riders to Virginia Tech as well as other local citizens. Being able to handle rider density is a daunting task, especially when their ridership needs extra attention when it comes to adhering to a predictable time table. Of the 2,950,000 riders per year, students account for 90%: all of whom have very strict schedules and obligations as you can imagine. So the need for reliability and being on time was of utmost concern to both the riders and to the agency responsible for scheduling and planning bus routes.
挑战
Density and rider counting were the main problems. It was incredibly hard to determine exactly which buses were overflowing capacity and which ones were going under ridden. BT knew that this info could help to improve their services, if only they could collect it. The added problem they faced was the fact that their buses did not use electronic fare boxes. This led the BT to determine that fixed route software with automated rider counting capacity was needed in order to get a clearer and more accurate picture of their operation. For example, how many students versus faculty, staff and citizens were using their system? Knowing these pieces of info could allow BT to determine where their buses should be, depending upon ridership and time of day. They needed to share valuable rider data with Virginia Tech, but they couldn’t. On top of bus density was the issue that faced their dispatchers. Saddled with a great deal of paperwork for information management purposes, dispatcher time wasn’t being used to optimal amounts. With attention focused on spreadsheets, valuable time and resources are drawn away from areas such as customer complaints and calls.
解决方案
TripSpark’s software along with CAD/AVL (Computer Aided Dispatch/Automatic Vehicle Location) technologies was implemented in order to automate the dispatching of vehicles and facilitate the collection of rider data. This allowed BT to track vehicles in real time, get an extremely clear picture of ridership. The drivers were given the ability to contact dispatchers wirelessly in order pass relevant and important information regarding schedule timing and adherence. We replaced traditional paper work with a digital data collection solution that allowed them to generate instant reports on who was taking the bus at any given time. TripSpark’s fixed route transportation solution gave dispatchers a user-friendly view of vehicle data such as: bus density, location and adherence to schedule.
运营影响
数量效益
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