1

Scalable, Preventive, Real-Time Monitoring of Railway Crossings

Java
Node.js
Logistics and transportation

The customer

The company is a global provider of technologies, infrastructure, as well as vehicles for rail transportation. Its portfolio includes railway signaling, control, electrification, and automation systems. The customer also produces commuter, regional, high-speed, and intercity trains / locomotives.

The need

The company had a legacy system for monitoring railway crossings—tracking accidents and equipment malfunctions. However, the solution was designed as a monolithic app, which failed to scale and made it difficult to introduce new modules and functionality. So, the customer partnered with Altoros to achieve flexibility in maintenance and to sustain petabytes of data from multiple devices installed at the railway stations. Having achieved this, critical notifications about potential or happening accidents needed to be delivered in real time.

The challenges

Under the project, the team at Altoros had to address the following issues:

  • The app deployment required a lot of time-consuming manual steps, which slowed down the delivery of critical functionality into production.
  • The IoT system needed to support a range of old devices installed at the stations—until they got replaced with the new ones.

The solution

By splitting the legacy monolith into microservices, our developers made it possible to easily introduce new functionality without the need to update the whole system. To automate manual deployment, engineers at Altoros containerized the system with Docker and employed Kubernetes as an orchestrator. Thus, the team simplified container management and accelerated the delivery into production, cutting operational efforts by 10–15 times. On the way to improving scalability, experts at Altoros integrated the HiveMQ message broker. This allowed for achieving the throughput of megabytes per second—by queuing petabytes of incoming data. (HiveMQ also was used for sending critical notifications in real time.) With HDFS, our developers made it possible to store immense amounts of historical data for analysis. In addition, the engineers utilized Apache Kafka to transfer data between multiple isolated security zones of the solution, which was previously impossible.To support and standardize legacy devices installed at railway crossings, the Altoros team bound old sensors with the MQTT protocol. It became responsible for transferring the emitted information to the data center.

Using TensorFlow, our engineers built a prototype responsible for analyzing data from video cameras—to detect dangerous situations at railway stations and prevent accidents through notifying responsible parties.

The outcome

Collaborating with Altoros, the customer delivered a scalable solution for monitoring railway crossings and notifying about accidents or malfunctions in real time. With a microservices architecture, the company can now easily extend functionality without affecting the whole system. The solution can also sustain petabytes of data daily, processing megabytes per second. The system already gathers IoT data from nearly 5,000 edge devices installed at 2,500 railway crossings in the USA and Canada.

Technology stack

Platform

Kubernetes

Programming languages

Java, Python

Technologies

Node.js, Cloudera, Apache Kafka, HiveMQ, MQTT, Docker, TensorFlow

Databases

Couchbase Server, MongoDB, PostgeSQL, HDFS

You May Also Like

Automation of In-field Job Planning and Performance Optimization
Java
JavaScript
PostgreSQL
Information technology
Marketing
Call Recording, Analytics, and Workforce Optimization Solution
.NET
jQuery
C#
JavaScript
MS SQL
Information technology
Highly Scalable System for DNA Analysis
Hadoop
Java
Information technology
Healthcare
Sport
A Highly Secure Smart Home System Wins a Kickstarter Funding
Ruby
Ruby on Rails
JavaScript
Angular
PostgreSQL
MySQL
Information technology
The Image Recognition System
Java
MongoDB
NoSQL
e-Commerce
Integrated logistics solutions to the offshore industry
Android
LikeFolio: Best Practices of Cloud and Ruby Development for Application Optimization
NoSQL
MySQL
Ruby
Ruby on Rails
Marketing
Social media
Telecommunications
Finance
Data-Driven Analytics
Software for Selecting and Mixing Paint
.NET
MS SQL
C#
WP
Information technology
Retail
Software Suite for Mobile Technicians and Field Service Management
.NET
MS SQL
iOS
Android
Logistics and transportation
The System for Emergency Control Centers
.NET
C#
MS SQL
Healthcare
Sport
Logistics and transportation
The Cloud-based Document Exchange System
Java
jQuery
NoSQL
Information technology
e-Commerce
The Marketing Information Messaging System
.NET
C#
MS SQL
iOS
Marketing, Social media
Telecommunications
The NuoDB Migrator for Moving SQL Data to a NoSQL Database
Java
NuoDB
MySQL
PostgreSQL
Information technology
Manufacturing
Toyota Automates Its System for Holding Tenders
.NET
C#
Manufacturing
Warehouse Workload Monitoring Application
.NET
C#
MS SQL
WP
Logistics and transportation
Web-Based Personal Styling
Ruby
Ruby on Rails
JavaScript
jQuery
MySQL
Social media
e-Commerce
Web-Based System for Retailers
Ruby
Ruby on Rails
MySQL
MongoDB
Retail
e-Commerce
A Blockchain-Based Platform for Automating Bond Issuing Worth $10M
Bash
JavaScript
Blockchain
Finance

Contact us

Jan-Terje Nordlien

Daglig leder

jan-terje@altoros.no+47 21 92 93 00

Altoros Norge AS
Org.nr.: 894 684 992
Tordenskiolds gate 2,
0160 Oslo