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Table 1: Result for number of negotiation rounds.
Pallets 2-round 3-round 4-round >4
30 86.7% 13.3% 0% 0%
60 66.7% 26.7% 6.6% 0%
90 53.3% 28.9% 11.1% 6.7%
The average time spent on negotiation is shown
in table 2. The average time spent on handling is
shown in table 3.
Table 2: Result for average negotiation time.
Initiator Negotiation
Time (Old)
Negotiation
Time (New)
RGV 6.36 (seconds) 3.12 (seconds)
Stacker Crane
8.22 (seconds) 3.68 (seconds)
Table 3: Result for average handling time.
Initiator Handling
Time (Old)
Handling
Time (New)
RGV 56.76 (seconds) 43.32 (seconds)
Stacker Crane
68.92 (seconds) 48.90 (seconds)
5 CONCLUSION
This paper presents a PCME-based dynamic
negotiation approach that is particularly applicable
to the distributed manufacturing system, which is
dynamic and time-critical in nature. The research
work uses a real-time multi-equipment material
handling system as a test platform. This system is
time-critical in operation and therefore, requires an
adaptive, fast and efficient decision-making
mechanism.
The approach discussed in this paper adopts the
strategy of balancing of the cooperative negotiation
and the self-interested negotiation. It also effectively
sets the boundary of negotiation and reduces the
rounds of negotiation through the use of PCME as
the assessment criteria.
The dynamic negotiation approach has been
applied in the execution control of an ASRS system.
The results of the experiments show that this
approach is sufficiently efficient and has achieved
higher percentage of goal attaining in terms of
average task execution time.
A test model with more sophisticated
environment is being built for the future research
work.
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