商业、市政和个人车队的电动化正在迅速发展。世界众多地区陆续发布了其禁售燃油车时间表,包括海南省在内的世界上很大一部分地区公布了最迟在 2030 年停止销售燃油汽车的目标,伦敦金融城和挪威更是宣布了会在三年内逐步达到禁售燃油汽车的目标。对于许多企业和公共组织来说,要如何顺利度过这一重大变化时期并充分利用随之而来的机遇,敏锐的洞察力和明智的规划不可或缺。
下面是我们收集的几个案例和研究:
Drones, are developing rapidly; their capabilities are increasing and the costs reducing. Their increased use will lift the UK GDP by 2% according to a PwC report. Certainly, they hold great promise, reducing delivery times and cost, as Amazon is exploring, and even have the potential to revolutionize commuting — EHang’s Air Taxi or Uber’s Elevate.
Mosimtec is supporting drone/UAV network deployment through simulation. By exploring operational constraints in a virtual environment, it is possible to evaluate variables such as scheduling, maintenance, fleet size, and charging times. Review and video...
UDES is designed for teaching the complex nature of city interactions, and also a method for representing them – agent based simulation.
It is an excellent example model, accessible to all, with both interactive and customizable elements. Let’s take a closer look…
Get inside the model! In this post, we will look at the technical features of the example Border Checkpoint model: what it consists of, how it works, and what methods were used in its development.
Learn tips and tricks as you go through the model step by step with our expert...
New releases of AnyLogic come with new example models. These help newcomers understand simulations and experienced users to learn about AnyLogic’s advanced capabilities.
New to AnyLogic is our Border Checkpoint model. It is based on the same principles as classical queueing systems, such as those found in banks, shops, and medical centers.
In this post, we show how to model and analyze a variety of these business problems using the new border crossing model.
Fruit of the Loom (FOTL), one of the largest US apparel manufacturers was expanding its product line in early 2014 and faced the decision to add a new distribution center (DC) or to redistribute products to a pre-existing DC. To identify the benefits of each option in terms of cost and supply chain optimization, Fruit of the Loom required greater visualization than typical supply chain management tools could offer.
A smart bike sharing system can provide fast and easy access to public transportation where short trips are common for a large portion of the population. Urban planning officials in the City of Leon, Guanajuato, Mexico believe the socioeconomic conditions along with its societies adherence to this mode of transportation combined with the urban trace and physical conditions encourage the adoption of a bike sharing system. The City of Leon contracted Karla Margarita Gamez Pérez, Eleazar Puente Rivera, and her team from The University of Monterrey to research the possibility of a bike sharing system prior to implementation. Karla’s team chose AnyLogic Software for simulation modeling to carry out the design and dimensioning of the system.
In public transport, bus bunching refers to a group of two or more transit vehicles (such as buses or trains), which were scheduled to be evenly spaced running along the same route, instead running in the same location at the same time, according to Wikipedia. Dave Sprogis, Volunteer Software Developer, and Data Analyst in Watertown, MA noticed a constant complaint from residents about bus service provided by the MBTA. On a route that advertises a bus “every 10 minutes or less” during rush hour, waits were frequently more than 30 minutes, sometimes an hour! As you probably assume, buses do not start out bunched — they start out evenly spaced according to the schedule that deploys them. However, as the buses run the route, some run a little faster while others run a little slower. There is variability in traffic lights, pedestrian crossings, numbers of passengers loading and unloading, or even differences in driver pace.
Over ninety percent of the world’s trade containerized, and in the Port of Hamburg in Germany over nine million containers are transshipped every year. Till now the early provision of information for both the estimated time of arrival (ETA) of vessels and containers is not established. Containers are offloaded and stored at terminals, and then they are usually sent by ground transportation to their further destinations. This hinterland part of the supply chain can often become a bottleneck because if a deep-sea vessel gets delayed, it can complicate further shipment processes. Furthermore, the terminal has no information about the hinterland mode selected or the time of off-loading a certain container (first or last).