Automotive

Connected Tire Market Stakeholders are Focusing on Increased Offerings for New Tire Products

Transparency Market Research has published a new report on the global connected tire market for the forecast period of 2020–2030. According to the report, the global connected tire market is projected to reach ~US$ 200 Mn by 2030, expanding at a CAGR of ~75% during the forecast period of 2020 to 2030.

Similarly, connected tires are becoming a large segment of the Internet of Things (IoT) network. Connected tires are embedded with sensors that make driving safer and more convenient for consumers. The sensors collect important data and information that can be used to assess the vertical load in cars.

Thus, the technology used in connected tires is not only beneficial for consumers, but the collected data and information can also be assessed by OEMs (Original Equipment Manufacturers) with the help of the IoT network, so as to identify the limitations of the tires and strategize technological innovations to overcome the same. Information acquired from connected tires can help stakeholders provide personalized and proficient advice for uses such as optimal tire pressure adjustment, to improve their performance in the long run.

Request PDF Sample – https://www.transparencymarketresearch.com/sample/sample.php?flag=S&rep_id=67028

The high cost of connected tires is primarily due to operational and supply chain limitations. Important information and data depend upon the network strength for IoT-connected tires. Technological drawbacks also pose a challenge, since connected tires are ingrained with several sensors, motors, and complex controls that need to withstand harsh environments and rough terrains.

Manufacturers are focusing on lucrative product offerings to the aftermarket, for connected tires that work in tandem with remote monitoring systems. OEMs are developing tire sensors in autonomous driving systems that assess road conditions. Tires are connected with high-level IT (Information Technology) systems that analyze data for continuous process improvement.

Tags

Related Articles

Back to top button
Close