Mechanical and Durability Properties of Concrete Incorporating LD Slag
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Abstract
Concrete usage in recent decades has skyrocketed, which has led to immense pressure on the
natural resources such as river sand and coarse aggregates involved in its production. This
continuous consumption of natural resources is due to increased industrialization and urbanization.
The circular economy concept, i.e., usage and recycling of waste products, can be incorporated
into concrete production to alleviate the overutilization of natural resources. Overutilization of
natural resources has impeded the movement towards green concrete in construction, i.e., utilizing
waste materials in its production, steel slag waste being one of them. Linz-Donawitz slag (LD
Slag) is one of the steel slag generated during the Basic Oxygen Furnace (BOF) steel-making
process. Accumulation of LD slag has become cumbersome in India, posing a problem of landfills,
aggravating limited land availability and environmental degradation, i.e., abating soil and water
quality due to the leaching of toxic and heavy metals.
Previous studies employed LD Slag as an alternative to natural aggregates in concrete production.
Moreover, fewer experimental studies have examined whether weathered fine LD Slag can
substitute for fine aggregates in concrete. However, none of the studies has focused on the
comparative behavior of weathered coarse LD slag and fine LD slag incorporated in Normal
Strength Concrete (NSC) and metakaolin-based High-strength Concrete (HSC). The present
experimental study focuses on determining the ideal replacement level of coarse and fine
aggregates with LD Slag, one at a time. Natural aggregates were replaced volumetrically, one at a
time, with LD Slag at 25, 50, 75 and 100%. Physico-mechanical and durability properties such as
hardened concrete density, ultrasonic pulse velocity, compressive strength, split tensile strength,
flexural strength, modulus of elasticity, drying shrinkage, water absorption, sorptivity and abrasion
resistance were evaluated. Furthermore, different data sets, one for mixes incorporating LD slag
coarse aggregate (LDCA) and another for mixes incorporating LD slag fine aggregate (LDFA),
were taken to predict the compressive strength of concrete using artificial intelligence (AI)
methods such as Artificial Neural Networks (ANNs), Decision Trees (DT) and Random Forests
(RF). The coefficient of determination R2, Mean Absolute Error (MAE) and Root Mean Square
Error (RMSE) were computed to assess the performance of generated models. Besides, a
sensitivity analysis technique was employed to determine the most influential parameter, among
cement, Metakaolin, Fine Aggregate, Coarse Aggregate, LD slag, Superplasticizer, water content
and testing age, affecting the compressive strength results.
Results showed that replacing 75% of coarse aggregates with LDCA displayed the best results for
said properties compared to the control mix for NSC and HSC. Compressive strength, split tensile
strength, flexural strength and modulus of elasticity were improved in the range of 7-9%, 19-29%,
6-11% and 7-16% for 75% replacements at 90 days of testing, respectively. The sorptivity
coefficient was also reduced compared to control mixes at all testing ages, along with lower water
absorption, abrasion, and drying shrinkage. While a 75% replacement of natural aggregates with
LDCA yielded the most favourable test results for the examined properties, complete replacements
could be contemplated, yielding nearly comparable results to control mixes in NSC and HSC. On
the contrary, substituting fine aggregates with LDFA up to 50% for NSC and 25% for HSC yielded
superior test results for various properties compared to traditional concrete mixes. At 90 days of
testing, there was an approximate 6% increase in compressive strength, a 2-12% enhancement in
splitting tensile strength, a 6-16% improvement in flexural strength, and a minor increment of 1-
4% in MOE, showcasing the effectiveness of the LDFA replacements. The durability of concrete
incorporating LDFA was also enhanced with the mentioned replacements. In addition,
replacements of 75% of fine aggregates with LDFA in NSC and 50% in HSC can be deemed
suitable, offering comparable results to control mixes.
Among the proposed AI techniques, the DT technique emerged as the top-performing model for
both datasets analyzed. For the dataset involving mixes with LDCA, DT exhibited the highest R2
value of 0.957, with the lowest MAE recorded at 4.065 MPa and RMSE of 3.220 MPa. Conversely,
for the dataset concerning mixes with LDFA, the R2 value was 0.973, with the least MAE (3.534
MPa) and RMSE (4.409 MPa) compared to other models. Sensitivity analysis conducted on the
DT model revealed that testing age was the most influential parameter for predicting compressive
strength in both scenarios.
Increasing the proportion of LDCA in concrete mixes results in the production of heavyweight
concrete due to its higher specific gravity compared to natural coarse aggregates. This heavyweight
concrete finds potential applications in various fields such as hospital radiation rooms/bunkers,
nuclear waste containers, and tunnels. Furthermore, concretes containing LDCA or LDFA can be
explored in unreinforced concrete products like paver blocks, building bricks/blocks, gravity
retaining walls, concrete kerbs/curbs, and concrete tiles.
