3.2.1. Effects of the Respective Variables on Each Response Value
Test results of 5 response values of lithium slag composite cementitious materials at 17 groups different ratios designed in
Table 5 are shown in
Table 6.
The 17 groups test results in
Table 4 were analyzed and processed using
RDM-BBD, and the least squares fitted mathematical regression models between 5 response values and the independent variables activated lithium slag mass fraction
, sodium silicate dosage
, and water–solid ratio
were respectively, constructed using the quadratic model as shown in Equations (2)–(6).
To ensure the reliability of the above five mathematical models, their reliability indexes were verified separately and the results are shown in
Table 7.
The coefficient of determination
indicates the influence degree of independent variables taken on the response values. The larger
, the higher influence is indicated.
in
Table 7 are all greater than 0.95, indicating that the three independent variables have a high influence degree on each response value.
The correction correlation coefficient
, indicates the degree to which response value changes can be analyzed by the model. In
Table 7,
are all greater than 0.95, indicating that the effect of the independent variables on each response value can be analyzed by this numerical model.
The prediction correlation coefficient,
, indicates the prediction reliability of the model. The
in
Table 7 are all greater than 0.90, and are closer to 1, which shows that the predictive reliability of the 5 constructed response value models is high [
34,
35].
The signal-to-noise ratio (
SNR) indicates the reasonableness of the established model. The signal-to-noise ratios in
Table 7 are all much greater than 4, indicating that the model constructed for the response values can predict the changes in the response values well [
39].
The coefficient of variation (
CV) indicates how well the regression model fits the sample data points. When it is under 10%, it indicates that the model’s predictions are highly aligned with the observed test data [
34,
35,
39]. The
CVs in
Table 7 are all less than 10%, indicating that the regression model equations fit the test data points well, the error is small, and stability is high [
39,
42].
To investigate the significance of independent variables and the effect of the interaction terms of independent variables on each response value, this section performs significance tests and
ANOVA on Equations (2)–(6).
F values are usually used to compare the significance or not of the differences between groups of factors, and the larger the value, the stronger the significance of the model, which indicates the higher simulation accuracy [
43].
p values can test the significance of experimental data that are not related to the model [
33,
44], and in general, the larger
F value is larger,
p value is smaller, and when
p value is <0.05, it means that the effect of the independent variable on the response value is significant. Conversely, it is not significant.
According to the
p value in
Table 7, the significant independent variables of
are
and
, and the significant interaction terms are
and
. The significant independent variables of
are
,
,
and the significant interaction terms are
,
. The significant independent variables of
are
and the significant interaction terms are
,
. The significant independent variables of
are
,
and the significant interaction terms are
,
. The significant independent variables of
are
,
,
and the significant interaction terms are
,
,
.
Based on the above analyzed results, the effects of three independent variables on five performance indexes of the composite cementitious materials were further predicted according to Equations (2)–(6), and the results are shown in
Figure 8.
Figure 8a–c, respectively, shows the effect of activated lithium slag mass fraction
, sodium silicate dosage
, and water–solid ratio
on fluidity
, gelation time
, water evolution rate
, 3d compressive strength
and 28d compressive strength
.
From
Figure 8a, the increase in activated lithium slag mass fraction
will cause the fluidity
and water evolution rate
to be greatly reduced, while causing the gelation time
to be greatly increased. As activated lithium slag mass fraction
increases to about 8%, 3d compressive strength,
, and 28d compressive strength,
, show a significant increase; as
continues to increase,
and
begin to decrease significantly. It was verified that the activated lithium slag mass fraction
had a significant effect on all five response values, which is consistent with the analytical results in
Table 8.
The reason is that the increase in activated lithium slag mass fraction causes the increase in internal surface area of the particles in cementitious materials, and free water is largely adsorbed, resulting in a decrease in fluidity and water evolution rate. At the same time, a smaller mass fraction of activated lithium slag will make lithium slag’s hydration reaction untimely, and internal active ingredient molecules and require higher fracture energy, which leads to prolonged chemical reaction time of or and with hydration product . The compressive strength of the cementitious material is the greatest at the middle-coded value because the incorporation of activated lithium slag in the early stage accelerated the production of gel. With the continued incorporation of activated lithium slag, the content provided by sodium silicate is relatively reduced, resulting in an inadequate hydration reaction of the lithium slag and a relative reduction in content of the flocculated gel, which ultimately leads to reduced compressive strength.
From
Figure 8b, with
increasing,
of the composite cementitious material shows a significant increasing trend, and
,
, and
all increase first and then decrease. Among them,
and
have an overall insignificant magnitude change, while
increases or decreases very significantly.
decreases slowly with
increase. This is consistent with the analysis in
Table 8.
The reason is, increase caused the water content to increase, diluting the grout slurry and leading to of cementitious material to increase. When was not in excess, the free water required for the hydration reaction of cement and lithium slag was sufficient, so , , and also increased. With increasing continuously to the middle-coded value, the pores are filled by a large amount of free water, and the excessive ions may interfere the orderly arrangement and polymerization of the molecules of the cementitious constituents, which makes difficult to form the cementation structure, which prolongs the cementation time and leads to a decrease in the compressive strength and water evolution rate.
From
Figure 8c, the change rates of
,
,
,
, and
are all approximately linear, indicating that
increase has a significant effect on each response value. The reason is,
increase improves the free water content, diluting the slurry, and water evolution rate naturally increases. At the same time, free water fills the voids and the cementation production slows down, making
prolonged,
larger, and the formation of gel components difficult, leading to a decrease in
and
. Therefore, the water–solid ratio is a key independent variable and must be scientifically and reasonably optimized to obtain the ideal material properties.
3.2.2. Effect of Interaction Term of Independent Variables on Each Response Value
According to Equations (2)–(6), Design-Expert Software (DX13) is used to construct 3D response surfaces, showing the influence of independent variables interaction terms on each response value.
According to
p-values in
Table 8, it can be seen that the interaction terms
and
are significant influences on the fluidity
, and according to
p-values in
Table 8, it can be seen that the interaction terms
and
are significant influences on the fluidity
, and 3D response surfaces are shown in
Figure 9, which are parabolic surfaces with openings sloping downward to the ridges.
Figure 9a shows fixing activation lithium slag mass fraction
, fluidity
minimum at sodium silicate dosage
of 6%. Fixed sodium silicate dosage
, fluidity
maximum is at activation lithium slag mass fraction
of 5%, and minimum is at activation lithium slag mass fraction
of 10%. According to the engineering requirements of the fluidity
[
19,
20], activation lithium slag mass fraction
should be taken in (7–8%), i.e., approximately the middle value of its range (5–10%).
Figure 9b shows that by fixing water–solid ratio
, fluidity
maximum occurs in 8–9% of sodium silicate dosage
.
In summary, activation lithium slag mass fraction takes (7–8%), sodium silicate dosage is 8–9%, and water–solid ratio is 0.6:1; the fluidity is more in line with the engineering requirements.
Three-dimensional response surfaces of gelation time
are shown in
Figure 10, which are all parabolic surfaces with openings upward or downward to the ridges, proving that
and
have a significant effect on gelation time
. This is consistent with the analysis conclusion of
-values in
Table 8.
Figure 10a shows that fixing sodium silicate dosage
, gelation time
is the longest when activated lithium slag mass fraction
is 15%, and the shortest when it is 5%. When activated lithium slag mass fraction
exceeds 10%, gelation time
will be too long, which will reduce the early strength of the cementitious material, so the optimal value of activated lithium slag mass fraction
occurs in the range of 5–10%. With fixed activated lithium slag mass fraction
, gelation time
is shortest when sodium silicate dosage
is about 8–9%.
Figure 10b shows that fixing sodium silicate dosage
, gelation time
is the longest when water–solid ratio
of 0.6:1 or 0.8:1. Fixing water–solid ratio
, gelation time
is the longest when sodium silicate dosage
of 10%, and the shortest when it is 6%. In summary, when the activated lithium slag mass fraction
takes (7–8%), sodium silicate dosage
is 8–9%, and water–solid ratio
is 0.6:1, gelation time of composite cementitious material will be more reasonable [
31,
33].
Three-dimensional response surfaces of water evolution rate
are shown in
Figure 11, which are all parabolic surfaces with openings upward or downward to the ridges, proving that
and
have a significant effect on water evolution rate
. This is consistent with the analysis conclusion of
-values in
Table 8.
Figure 11a shows that fixing sodium silicate dosage
and activated lithium slag mass fraction
of 6%, the water evolution rate
is maximum; fixing activated lithium slag mass fraction
and sodium silicate dosage
has almost no effect on water evolution rate
.
Figure 11b shows that fixing sodium silicate dosage
, water evolution rate increases slowly with the increase in water–solid ratio
; sodium silicate dosage
is 8–9%, and water evolution rate
maximum occurs when water–solid ratio
is 0.6:1.
In summary, the water evolution rate
is more in line with the engineering requirements, when activated lithium slag mass fraction
is in the range of 7–8%, sodium silicate dosage
is 8–9%, and water–solid ratio
is 0.6:1 [
11,
16].
Three-dimensional response surfaces of 3d compressive strength
is shown in
Figure 12, which are all parabolic surfaces with openings upward to the ridges, proving that
and
have a significant effect on 3d compressive strength
. This is consistent with the analysis conclusion of
-values in
Table 8.
Figure 12a shows that fixing water–solid ratio
, 3d compressive strength firstly increases and then decreases with activated lithium slag mass fraction
increasing, and reaches the maximum at around 7%. Fixed activated lithium slag mass fraction
, with the increase in water–solid ratio
, 3d compressive strength is decreasing.
Figure 12b shows that fixing the water–solid ratio
, the 3d compressive strength
increases with the increase in sodium silicate dosage
. Fixed water–solid ratio
, 3d compressive strength reaches its maximum at 8–9% of sodium silicate dosage
.
In summary, when activated lithium slag mass fraction is the middle value of (5–10%), sodium silicate dosage is at 8–9%, and water–solid ratio is 0.6:1, the 3d compressive strength this maximum.
Three-dimensional response surfaces of 28d compressive strength
are shown in
Figure 13, which are all parabolic surfaces with openings upward or downward to the ridges, proving that
and
have a significant effect on 28d compressive strength
. This is consistent with the analysis conclusion of
-values in
Table 8.
Figure 13a shows that by fixing water–solid ratio
, 28d compressive strength
is maximized at about the middle of its range where activated lithium slag mass fraction
is (5–10%). Fixing activated lithium slag mass fraction
, 28d compressive strength
is maximized at a water–solid ratio
of 0.6:1.
Figure 13b shows that fixing sodium silicate dosage
, 28d compressive strength
maximum occurs at a water–solid ratio
of 0.6:1. Fixing the water–solid ratio
, sodium silicate dosage
in the range of 8% to 9% maximizes the 28d compressive strength.
In summary, 28d compressive strength is maximized when water–solid ratio is taken as the middle value of (5–10%), sodium silicate dosage is 8–9% and water–solid ratio is 0.6:1.
This section focuses on identifying the key independent variables and their interaction terms that affect the performance indexes of the cementitious materials. Parametric conditions are provided for the analysis of subsequent work