dc.description.abstract |
Measurement and Verification (M&V) has become an indispensable process in various incentive
energy efficiency and demand side management (EEDSM) programmes to accurately and reliably
measure and verify the project performance in terms of energy or cost savings. Due to the uncertain
nature of the un-measurable savings, there is an inherent trade-off between the M&V accuracy and
M&V cost. Practically, there are three types of quantifiable uncertainties coupled with the M&V
process including measurement, modelling and sampling uncertainties. For large-scale lighting retrofit
projects that require long-term continuous measurements, the desired sampling effort for savings
determination contributes to a significant increase to the M&V cost. On the contrary, the measurement
and modelling uncertainties are considered less significant in the lighting M&V process. In
order to handle the sampling uncertainties and achieve the required M&V accuracy cost-effectively,
three metering cost minimisation (MCM) models are proposed, namely spatial MCM model, longitudinal
MCM model, and the combined spatial and longitudinal MCM model to assist the design of
optimal M&V metering plans, by which the minimal metering cost is achieved with the satisfaction
of the required M&V metering and sampling accuracy. In the proposed MCM models, the objective
functions are the M&V metering cost that covers the procurement, installation and maintenance
of the M&V metering system whereas the M&V accuracy requirements in terms of confidence and
precision levels are formulated as the constraints. Generally, for lighting projects that have multiple homogeneous lighting groups with different sampling uncertainties, the spatial MCM model is most
applicable when the lighting population are properly maintained to avoid lamp population decay. If
no project population maintenance activities are carried out, then the lamp population will decay as
time goes by. In such a case, the longitudinal MCM model is most suitable to optimise the sample
sizes within adjacent reporting years for each lighting group. The combined spatial and longitudinal
MCM models exhibits the best performance in terms of metering cost minimisation whilst satisfying
the required M&V accuracy, especially for the lighting projects that have multiple lighting groups
with different sampling uncertainties and different population decay dynamics. Optimal solutions to
the proposed MCM models offer useful information in designing the optimal M&V metering plan,
such as the required lighting samples to be measured in each lighting groups, the achieved sampling
accuracy in terms of confidence and precision levels as well as the annual and total M&V metering
cost for the studied lighting project. The advantages of the proposed MCM models are demonstrated
by several lighting retrofit case studies. For the case studies, metering solutions obtained with or
without optimisations are calculated and compared. The comparisons highlight the advantageous
performance of the proposed MCM models. These MCM models are widely applicable to M&V
projects with different technologies, population sizes, and sampling accuracy requirements.
Since the lighting population decays as time goes by, the lighting project performance is not sustainable
and vanishes rapidly without proper maintenance activities. The scope of the maintenance
activities refers to the replacements of the failed lamps due to the occurrence of non-repairable lamp
burnouts. Full replacements of all the failed lamps during every maintenance activity contribute to a
tighter project budget due to the expense for the lamp failure identifications as well as the procurement
and installation of new lamps. Since neither “no maintenance” nor “full maintenance” is preferable to
the lighting project developers, an optimal maintenance planning (OMP) approach is also proposed to
decide the optimal number of failed lamps to be replaced, such that the EE lighting project achieves
sustainable energy savings whereas the project developers obtain their maximum benefits in the sense
of a maximum cost-benefit ratio. The OMP problem is aptly formulated under a control system framework.
According to existing studies on the lamp population decay modelling, the lamp population
decay dynamics are taken as the plant of the control system. The number of lamps to be replaced is
designed as the inputs of the control system. As different lighting technologies have different population
decay dynamics, different procurement prices and different rebate tariffs, the control inputs
can be optimally decided to satisfy the project budget constraints and project boundary constraints.
The optimal maintenance planning problem is then translated into an optimal control problem and solved by a model predictive control (MPC) approach. Since the lighting population has a close
relationship with the sample size determination, the optimal maintenance planning approach is also
integrated with the proposed MCM models, which further improves the performance and flexibility
to the applications of the proposed MCM models for the M&V metering plan designing. |
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