Mathematical Analysis of Optimal Operating Conditions in Heating Systems
Hindawi
Mathematical Problems in Engineering
Volume 2019, Article ID 4264562, 16 pages
https://doi.org/10.1155/2019/4264562
Research Article
Mathematical Analysis of Optimal Operating Conditions in
Heating Systems
Chan Kong, Yong Sun, Hongxi Zhang, and Yongjiang Shi
College of Energy and Environmental Engineering, Hebei Institute of Architecture and Civil Engineering, Zhangjiakou 075000,
Hebei, China
Correspondence should be addressed to Yongjiang Shi;
Received 7 January 2019; Accepted 31 March 2019; Published 6 May 2019
Academic Editor: Ali Ramazani
Copyright © 2019 Chan Kong et al. This is an open access article distributed under the Creative Commons Attribution License,
which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
With changes in the outdoor air temperature, the heat consumption of buildings also changes. Timely adjustment of the heating
systems to ensure optimal operating conditions is extremely significant to save energy. In this study, the operation conditions of
a heating system were analyzed numerically, and the existence, uniqueness, and stability of the optimal operation conditions of
the heating system were proved. An operation optimization model that could obtain the optimal operation conditions was also
established, and the correctness of the model was verified experimentally. Experimental results showed that when the flow rate
was 0.606 m3 /h, the supply water temperature was 67.13∘ C, water return temperature was 65.90∘ C, and the pump consumed the
least amount of electricity. The experimental results and model calculation results showed that the operating cost is lower when the
system flow rate is low and the supply water temperature is high under the same heat dissipation and indoor temperature.
1. Introduction
In the operation of heating systems, besides controlling and
adjusting the operation parameters, it is necessary to adjust
the heat supply according to the season, outdoor temperature,
and heat demands of users [1]. The purpose is to make the
heat dissipation from dissipating equipment adapt to the
changing heat load, protect users from excessively high or
low room temperatures, ensure that the user heat demand is
met, and avoid unnecessary heat wastage to realize economic
operation of heating systems [2].
Until now, several studies have been carried out on the
optimized operation of heating systems, focusing on the
establishment of mathematical models of water supply temperature, flow rate and outdoor temperature, and regulation
of water supply temperature and flow rate. Atli Benonysson
et al. [3] found that, in order to adapt to the change of heat
load, frequent regulation of water supply temperature can
reduce the operating costs, but they did not precisely state
the frequency at which the water supply temperature was
regulated. Guillaume Sandou and Sorin Olaru [4] applied
the particle swarm optimization method to control district
heating pipe networks and found that the optimization effect
was different when the water supply temperature was adjusted
at different frequencies. In addition, selection of the control
cycle was an important part of the modeling problem [5].
Jonas Gustafsson et al. [6] controlled the radiator system
and found that, compared with the traditional control, the
larger temperature difference between the primary supply
and return water could reduce the energy consumption of
the pump and improve the overall fuel efficiency. Pengfei Jie
et al. [7] established a dynamic model of the heating system
network; based on this model, the peak valley method and
correspondence analysis method were introduced, respectively, and two important parameters related to the dynamic
characteristics of the heating system, i.e., delay time and
relative attenuation degree, could also be calculated. It is
concluded that the delay time is approximately equal to the
time of heat media flow. These findings provide basis for the
optimized operation and management of heating systems.
Aibin Yan and Jun Zhao et al. [8] established the hydraulic
model and found that, compared with the traditional central
circulation pump, the distributed variable speed pump in the
heating system could save at least 20% energy. In particular,
when the distributed variable speed pump was used with
low flow, more power could be saved. P. Lauenburg et al. [9]
2
developed a control algorithm for the radiator system based
on field experiments and computer simulation. By determining the optimal combination of the water supply temperature and flow rate in the heating system, a low primary
return water temperature was obtained, thereby reducing
the operation costs. X. S. Jiang et al. [10] proposed an
integrated regional direct heating energy system model that
integrates wind energy, solar energy, natural gas, and electric
energy. By establishing the objective function of the optimal
control strategy with complex operation constraints, the fuel
consumption was minimized and the operating efficiency of
the system was improved. In other studies [11–13], the heat
storage capacity of the district heating system was adapted
to the large amounts of renewable energy conversion in
the system, thus improving the system operation flexibility
and economy. Based on outdoor temperature prediction and
process data history, Laakkonen et al. [14] modeled delay
as a distribution function and developed a robust optimizer
to minimize pumping cost and heat loss; by optimizing the
water supply temperature and flow rate, the heating system
could run efficiently and smoothly. M. Leśko et al. [15] have
presented different approaches to a simplified modeling of
district heating networks for optimization purposes. Yiwen
Jian et al. [16] analyzed an existing water temperature
regulation mode and its impact on indoor environment
and energy utilization on the basis of field investigation.
By comparing the relationship among outdoor temperature,
indoor temperature, indoor reference temperature, and water
supply temperature, a method for optimizing water supply
temperature based on simulation was proposed.
Hence, it can be seen that many researchers have worked
in the field of optimized operation of heating system, but
none have provided theoretical proofs regarding the properties of the optimal operating conditions of the heating
system. Moreover, the optimal operation conditions will have
different values under different constraints and objective
functions.
Therefore, in this study, optimization of the operation
of heating systems by adjusting the operating conditions
according to load changes was performed, and the optimal
operating conditions that can minimize the operating costs
of the heating system were determined.
To improve the operating efficiency and reduce the operating costs of the heating system, mathematical analysis of
the operating conditions was carried out. First, the existence,
uniqueness, and stability o (...truncated)