skip to content

Cambridge Centre for Smart Infrastructure and Construction

Transforming infrastructure through smarter information
 

CSIC Industry Partner Senceive has been awarded the Subcontractor of the Year - Micro Award at the UK Rail Industry Awards 2016.

 SenceiveColourlogo2.jpg

 

Senceive specialises in developing and deploying wireless Remote Condition Monitoring (RCM) solutions for rail and construction. The company’s FlatMesh wireless sensors are used in construction and railway related monitoring applications.

Senceive’s low-power monitoring systems enable rail staff to understand how an asset is affected by major construction or maintenance works to fix issues in congested environments without needing external cables.

Antoni Laqué, International Market Manager at Senceive said: “We are absolutely thrilled to win such a prestigious award and to be recognised as one of the industry leaders within the rail and construction technology sector.”

Senceive won the Ground Investigation and Monitoring Award at the NCE Tunnelling & Underground Space Awards 2015 for the Great Western Electrification Project: Box Tunnel Track Lower, in partnership with AECOM.

 

 

 

Latest news

CSIC Research Talk: “Distributed monitoring and structural interpretation of ageing masonry arch railway bridges” by Dr Sam Cocking

9 April 2024

In a recent CSIC research talk, titled “Distributed monitoring and structural interpretation of ageing masonry arch railway bridges”, Dr Sam Cocking, ( Research Associate at CSIC ), highlighted the urgent need for maintaining and optimising the use of existing railway infrastructure, with a particular focus on masonry arch...

Beyond data acquisition: new CSIC director Dr Brian Sheil shares insights.

9 April 2024

Last February Dr Brian Sheil, Laing O’Rourke Associate Professor in Construction Engineering, stepped into the role of director at the Centre for Smart Infrastructure and Construction (CSIC). As he assumes this prestigious position, Dr Sheil reflects on the pivotal role of deriving actionable insights from data obtained...

CSIC Twitter