Title of article :
Quantifying the impact of AIDC technologies for vehicle component recovery
Author/Authors :
Ajith Kumar Parlikad *، نويسنده , , Duncan McFarlane، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2010
Abstract :
Recovering value from end-of-life vehicles (ELV) has become increasingly important in recent years due
to legislative pressures. In this context, cannibalisation of valuable components for possible reuse in secondary
markets is becoming a popular option. However, recovery processes are characterised by high
levels of uncertainty regarding the quality of components returned at their end-of-life. Hence, the key
to making component recovery an cost-effective option is to provide more information regarding the condition
of components in the ELV to the recoverer. Emerging automated identification and data capture
(AIDC) technologies such as RFID tags and sensor networks can have significant impact on the effectiveness
with which product information is generated and shared among the various actors in the product
lifecycle. This paper illustrates how decision-making during product recovery can be improved by collecting
critical usage data during a vehicle’s lifecycle and making it readily available to key decision-makers.
In particular, we use a probabilistic model to quantify the benefits of automated information capture
technologies in improving product recovery processes.
Keywords :
Vehicle component recovery , Value of information , Decision-making , RFID
Journal title :
Computers & Industrial Engineering
Journal title :
Computers & Industrial Engineering