• No results found

Predicting Electrochromic Smart Window Performance

N/A
N/A
Protected

Academic year: 2022

Share "Predicting Electrochromic Smart Window Performance"

Copied!
2
0
0

Loading.... (view fulltext now)

Full text

(1)

Predicting Electrochromic Smart Window Performance

JOHNNY DEGERMAN ENGFELDT

Licentiate Thesis Stockholm, Sweden 2012

Akademisk avhandling som med tillstånd av Kungl Tekniska högskolan framlägges till offentlig granskning för avläggande av teknologie licentiatexamen i kemiteknik fredagen den 8 juni 2012 klockan 14.00 i Sal K2, Teknikringen 28 Entreplan, Kungl Tekniska högskolan, Stockholm.

TRITA-CHE Report 2012:24 • ISSN 1654-1081 • ISBN 978-91-7501-356-5

(2)

Abstract

The building sector is one of the largest consumers of energy, where the cool- ing of buildings accounts for a large portion of the total energy consumption.

Electrochromic (EC) smart windows have a great potential for increasing indoor comfort and saving large amounts of energy for buildings. An EC device can be viewed as a thin-film electrical battery whose charging state is manifested in optical absorption, i.e. the optical absorption increases with increased state-of-charge (SOC) and decreases with decreased state-of-charge.

It is the EC technology

0

s unique ability to control the absorption (transmit- tance) of solar energy and visible light in windows with small energy effort that can reduce buildings

0

cooling needs.

Today, the EC technology is used to produce small windows and car rear- view mirrors, and to reach the construction market it is crucial to be able to produce large area EC devices with satisfactory performance. A challenge with up-scaling is to design the EC device system with a rapid and uniform coloration (charging) and bleaching (discharging). In addition, up-scaling the EC technology is a large economic risk due to its expensive production equip- ment, thus making the choice of EC material and system extremely critical.

Although this is a well-known issue, little work has been done to address and solve these problems.

This thesis introduces a cost-efficient methodology, validated with experi- mental data, capable of predicting and optimizing EC device systems

0

perfor- mance in large area applications, such as EC smart windows. This method- ology consists of an experimental set-up, experimental procedures and a two- dimensional current distribution model. The experimental set-up, based on camera vision, is used in performing experimental procedures to develop and validate the model and methodology. The two-dimensional current distribu- tion model takes secondary current distribution with charge transfer resis- tance, ohmic and time-dependent effects into account. Model simulations are done by numerically solving the model

0

s differential equations using a finite element method. The methodology is validated with large area experiments.

To show the advantage of using a well-functioning current distribution model as a design tool, some EC window size coloration and bleaching predictions are also included. These predictions show that the transparent conductor resistance greatly affects the performance of EC smart windows.

TRITA-CHE Report 2012:24 • ISSN 1654-1081 • ISBN 978-91-7501-356-5

References

Related documents

The study includes a comparative analysis of an office building model with conventional windows and motorized awnings, versus electrochromic windows with different control

Because of the difference in operating conditions compared to wet clutches used in automatic transmissions, test rigs which can independently vary clutch load and sliding speed

Although it is not part of our problem, we have decided to supplement our conclusion with a set of recommendations and points that should be kept in mind for a foreign

concentrations like PM10, PM2.5, CO, Nitrogen Oxides (NO+NO2). A sustainable lifestyle in an urban city-like environment is thus possible only through smart city style urban

That led us to create an ordinal variable (0, 1, and 2) in each of the six reform areas. Figure 1 shows a graphic percent summary of each variable. Our study is primarily interested

This study examines whether machine learning techniques such as neural networks contain predictability when modeling asset prices and if they can improve on asset pricing prediction

The analysis data set is used to construct a binomial logistic regression model in which the output variable is whether a candidate scores over 200 points in the test. Binomial

få indikationer kring hur marknaden positionerade sig gentemot detta utifrån att studera sentiment på wallstreetbets. Som avslutning finns det framtida studier som är aktuella