61 research outputs found
Robust estimation of risks from small samples
Data-driven risk analysis involves the inference of probability distributions
from measured or simulated data. In the case of a highly reliable system, such
as the electricity grid, the amount of relevant data is often exceedingly
limited, but the impact of estimation errors may be very large. This paper
presents a robust nonparametric Bayesian method to infer possible underlying
distributions. The method obtains rigorous error bounds even for small samples
taken from ill-behaved distributions. The approach taken has a natural
interpretation in terms of the intervals between ordered observations, where
allocation of probability mass across intervals is well-specified, but the
location of that mass within each interval is unconstrained. This formulation
gives rise to a straightforward computational resampling method: Bayesian
Interval Sampling. In a comparison with common alternative approaches, it is
shown to satisfy strict error bounds even for ill-behaved distributions.Comment: 13 pages, 3 figures; supplementary information provided. A revised
version of this manuscript has been accepted for publication in Philosophical
Transactions of the Royal Society A: Mathematical, Physical and Engineering
Science
Designing colloidal ground state patterns using short-range isotropic interactions
DNA-coated colloids are a popular model system for self-assembly through
tunable interactions. The DNA-encoded linkages between particles theoretically
allow for very high specificity, but generally no directionality or long-range
interactions. We introduce a two-dimensional lattice model for particles of
many different types with short-range isotropic interactions that are pairwise
specific. For this class of models, we address the fundamental question whether
it is possible to reliably design the interactions so that the ground state is
unique and corresponds to a given crystal structure. First, we determine lower
limits for the interaction range between particles, depending on the complexity
of the desired pattern and the underlying lattice. Then, we introduce a
`recipe' for determining the pairwise interactions that exactly satisfies this
minimum criterion, and we show that it is sufficient to uniquely determine the
ground state for a large class of crystal structures. Finally, we verify these
results using Monte Carlo simulations.Comment: 19 pages, 7 figure
Microtubule length distributions in the presence of protein-induced severing
Microtubules are highly regulated dynamic elements of the cytoskeleton of
eukaryotic cells. One of the regulation mechanisms observed in living cells is
the severing by the proteins katanin and spastin. We introduce a model for the
dynamics of microtubules in the presence of randomly occurring severing events.
Under the biologically motivated assumption that the newly created plus end
undergoes a catastrophe, we investigate the steady state length distribution.
We show that the presence of severing does not affect the number of
microtubules, regardless of the distribution of severing events. In the special
case in which the microtubules cannot recover from the depolymerizing state (no
rescue events) we derive an analytical expression for the length distribution.
In the general case we transform the problem into a single ODE that is solved
numerically.Comment: 9 pages, 4 figure
Representative Days and Hours with Piecewise Linear Transitions for Power System Planning
Electric demand and renewable power are highly variable, and the solution of
a planning model relies on capturing this variability. This paper proposes a
hybrid multi-area method that effectively captures both the intraday and
interday chronology of real data considering extreme values, using a limited
number of representative days, and time points within each day. An
optimization-based representative extraction method is proposed to improve
intraday chronology capturing. It ensures higher precision in preserving data
chronology and extreme values than hierarchical clustering methods. The
proposed method is based on a piecewise linear demand and supply
representation, which reduces approximation errors compared to the traditional
piecewise constant formulation. Additionally, sequentially linked day blocks
with identical representatives, created through a mapping process, are employed
for interday chronology capturing. To evaluate the efficiency of the proposed
method, a comprehensive expansion co-planning model is developed, including
transmission lines, energy storage systems, and wind farms
Assessing Energy Storage Requirements Based on Accepted Risks
This paper presents a framework for deriving the storage capacity that an
electricity system requires in order to satisfy a chosen risk appetite. The
framework takes as inputs user-defined event categories, parameterised by peak
power-not-served, acceptable number of events per year and permitted
probability of exceeding these constraints, and returns as an output the total
capacity of storage that is needed. For increased model accuracy, our
methodology incorporates multiple nodes with limited transfer capacities, and
we provide a foresight-free dispatch policy for application to this setting.
Finally, we demonstrate the chance-constrained capacity determination via
application to a model of the British network
Capturing Chronology and Extreme Values of Representative Days for Planning of Transmission Lines and Long-Term Energy Storage Systems
The growing penetration of renewable energy sources (RESs) is inevitable to
reach net zero emissions. In this regard, optimal planning and operation of
power systems are becoming more critical due to the need for modeling the
short-term variability of RES output power and load demand. Considering hourly
time steps of one or more years to model the operational details in a long-term
expansion planning scheme can lead to a practically unsolvable model.
Therefore, a clustering-based hybrid time series aggregation algorithm is
proposed in this paper to capture both extreme values and temporal dynamics of
input data by some extracted representatives. The proposed method is examined
in a complex co-planning model for transmission lines, wind power plants
(WPPs), short-term battery and long-term pumped hydroelectric energy storage
systems. The effectiveness of proposed mixed-integer linear programming (MILP)
model is evaluated using a modified 6-bus Garver test system. The simulation
results confirm the proposed model efficacy, especially in modeling long-term
energy storage systems.Comment: IEEE PowerTech 202
Nondisruptive decentralized control of thermal loads with second order thermal models
Abstract-Dynamic load controllers for thermostatically controlled loads should allow for accurate control of power consumption and should not disrupt the quality of service. This paper proposes an intuitive definition of nondisruptiveness for systems with second-order thermal models, based on a decomposition into fast and slow temperature modes. It enables the explicit control of the slow mode temperature using an embedded first order model; control of the fast mode is implicit. Temperature bounds are derived, and the slow mode controller is implemented using an accurate decentralised stochastic control strategy. Simulation results confirm its accuracy and nondisruptiveness
Survival of the aligned: ordering of the plant cortical microtubule array
The cortical array is a structure consisting of highly aligned microtubules
which plays a crucial role in the characteristic uniaxial expansion of all
growing plant cells. Recent experiments have shown polymerization-driven
collisions between the membrane-bound cortical microtubules, suggesting a
possible mechanism for their alignment. We present both a coarse-grained
theoretical model and stochastic particle-based simulations of this mechanism,
and compare the results from these complementary approaches. Our results
indicate that collisions that induce depolymerization are sufficient to
generate the alignment of microtubules in the cortical array.Comment: 4+ pages, 3 figures v2: significantly revised the exposition of the
analytical model and expanded the discussion on our choice for the collision
outcome probabilities; clarified the scope of the conclusions; numerous
smaller changes throughou
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