Units: | - |
Default Value: | 2 |
Validation Rule: | In (2,3,4) |
Description: | Type of chronology used |
LT Plan Chronology controls the
level of detail used in representing the Horizon.
The settings can take these values:
- Partial (value = 2)
- Load (or Price)
duration curves are formed for each day/week/month/year (as
controlled by the LDC Type
setting). Each LDC/PDC contains Block
Count number of simulation periods. For example, 12 blocks
with monthly LDC gives 144 simulation periods per year rather than
8760 for hourly
simulation. Note that:
- You can reduce the number of blocks used in each curve later in
the Horizon using the Last
Block Count setting.
- Finer control is available over the slicing with the Global
Slicing Block property. This
is particularly useful for a system with a high concentration of
solar generation because it allows you to force periods of similar
solar concentration to be kept together in the same LDC block.
- Fitted (value = 3)
- The input Load (or Price)
series is fitted with a step function using the weighted least-squares technique so that the total
number of simulation periods per day/week/month/quarter/year (as
controlled by the LDC Type
setting) is equal to the Block
Count setting. For example, fitting 50 blocks per week gives
2650 simulation periods per year. Simulation periods preserve their
chronology and full chronological detail is available e.g.
generator start up and shutdown, ramping rate constraints, battery
energy storage, etc. This setting defines a single
resolution across the entire Horizon.
However, you can vary the resolution in one of two ways:
- Reduce the number of blocks fitted down to a minimum defined by Last Block Count; or
- Define multiple resolutions that apply to different periods of
time using the Resolution Type, Interval Count and Block Count
parameters described in Hidden
Parameters.
- Sampled (value = 4)
- Samples are taken of the days/weeks/months (as controlled by the Sample Type setting). The number
of samples taken is set by the Reduced
Sample Count and/or Reduction
Relative Accuracy. Sampling is done statistically such that
'like' periods (days/weeks/months) are removed leaving a sample set
that is representative of the variation in the original Load
(or Price) series. The sample
reduction technique is similar to that used in the Stochastic
Reduced Sample Count.
- Please note that after sampling a rescaling process is performed,
which detects wind, solar, load, etc. profiles (i.e.. highly
variable data) and rescales them such that the total energy equals
their original input amount. When rescaling the sampled profile, the
same method is used as the Load
Forecasting. The base profile (that gets rescaled) is the
profile that is produced by the sampling process, and the
sum/max/min targets come from the original input data for the
sampling interval. By default, the linear growth method is used to
calculate the scaling factors, and it will automatically switch to
quadratic method when linear method produces negative values. The
loads in the formulation are the weighted average of the reduced and
rescaled samples. To switch off the rescaling process please use the
undocumented parameter "SuppressRescalingSampledData" under "Model"
class.
Under the "Partial" option (using duration curves) chronology is
maintained only between duration curves, not within the
curves i.e. for weekly curves, constraints such as Storage
Max Volume are tracked only
between weeks, and most technical limits such as ramp
constraints, and generator start up and shutdown are not tracked.
For both the "Fitted" and "Sampled" options, full chronological
modelling is done. The key difference is that under the "Fitted"
option the duration of each time period can vary depending on how the
underlying intervals are grouped together, whereas under the "Sampled"
option the simulation periods are all the 'native' duration controlled
by the Horizon Periods
per Day setting.
For energy type models, "Fitted" and "Sampled" options query the Region Load
or Market Price
(for energy markets) along with adjustment factors such as Generator
Load Subtracter.
For Universal models you should associate LT Plan with one or more Variable objects using the Variables
collection. The Profile property
of those Variable objects is then
summed to produce the 'shape' for all chronology types to slice, fit
and sample.
See also: